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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800501 (2015) https://doi.org/10.1117/12.2208350
This PDF file contains the front matter associated with SPIE Proceedings Volume 8005, including the Title Page, Copyright information, Table of Contents, and Conference Committee listing.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800502 (2011) https://doi.org/10.1117/12.901617
Efficient algorithm for blind image deconvolution and its high-speed implementation is of great value in practice.
Further optimization of SeDDaRA is developed, from algorithm structure to numerical calculation methods. The main
optimization covers that, the structure's modularization for good implementation feasibility, reducing the data
computation and dependency of 2D-FFT/IFFT, and acceleration of power operation by segmented look-up table. Then
the Fast SeDDaRA is proposed and specialized for low complexity. As the final implementation, a hardware system of
image restoration is conducted by using the multi-DSP parallel processing. Experimental results show that, the
processing time and memory demand of Fast SeDDaRA decreases 50% at least; the data throughput of image restoration
system is over 7.8Msps. The optimization is proved efficient and feasible, and the Fast SeDDaRA is able to support the
real-time application.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800503 (2011) https://doi.org/10.1117/12.898746
We propose an adaptive edge detection algorithm for LOG operator based on a biological perspective solving the problem
of parameter setting. The algorithm can survive in different kinds of images with different imaging qualities. We introduce
the concept of Global Optimal Observation Scale that the best scale parameter for LOG lie at the global observation
location in scale space. Experimental results demonstrate strong capacity of the algorithm.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800504 (2011) https://doi.org/10.1117/12.899370
In order to mosaic neighboring and partly overlapping orthophotos of a scene into one large image, the paper proposes a
large block orthophoto mosaicking method. In our method, seam lines firstly are delineated through overlap areas among
orthophotos according to an optimal geometrical criterion. Then a network of mosaicking is built based on these
delineated seam lines, and related topology information may be easily abstracted from the mosaicking network. In the
second stage of our method, each seam line is optimized again by a modified snake algorithm. The algorithm makes
every seam line meet the requirements of maximum color similarity of the images and maximum texture similarity. In
order to searching an optimal seam line in a large overlap area as fast as possible, a hierarchical strategy is adapted. In
that way, an optimized path through the overlap area is found, where the color and texture of the two images are similar.
The still remaining jumps in hue and the differences in intensity and saturation have to be leveled by smooth
interpolation in the vicinity of the seam line. After having processed all overlapping areas, a large block of orthophotos
are automatically merged to a final large image.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800505 (2011) https://doi.org/10.1117/12.900681
The W Transforms are widely used in digital signal processing. This paper proposes a novel approach to compute
Discrete W Transforms via computation of the first-order moments without multiplications. A scalable and efficient
systolic array is designed to implement this approach. Compared with the other existing methods, the proposed
algorithms is simpler and more applicable.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800506 (2011) https://doi.org/10.1117/12.901244
In this paper, we present a co-design method for parallel image processing accelerator based on DSP and FPGA. DSP is
used as application and operation subsystem to execute the complex operations, and in which the algorithms are
resolving into commands. FPGA is used as co-processing subsystem for regular data-parallel processing, and operation
commands and image data are transmitted to FPGA for processing acceleration. A series of experiments have been
carried out, and up to a half or three quarter time is saved which supports that the proposed accelerator will consume less
time and get better performance than the traditional systems.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800507 (2011) https://doi.org/10.1117/12.901591
In this paper a novel MDCT without multiplications has been presented via transforming it into the computation of the
first-order moment. Then the method proposed for computing moments has been adapted to implement the arbitrary-length
MDCT efficiently. A very simple and scalable systolic array without multipliers and ROMs has also been
designed to perform the MDCT, which can result in the efficient VLSI implementation easily. And the comparison with
some existing methods shows the superiority of our method.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800508 (2011) https://doi.org/10.1117/12.901839
By analyzing the characteristics of infrared focal plane array image, an improved implementation of infrared focal
plane image enhancement algorithm based on FPGA is proposed, with limited FPGA memory resources for gray-scale
stretching. Experiment results show that the implementation is easy on FPGA with low FPGA memory without extra
memory devices. Moreover, it is flexible and effective for improving gray contrast of the interested region of the
image, and proved to meet the requirements of infrared focal plane detector for image enhancement showing great
utility value.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 800509 (2011) https://doi.org/10.1117/12.901923
Retrieving the parameters in water quality with multispectral data using neural network is increasingly popular, however,
the training process with large amount samples and calculation with large-volume data are a time-consuming work.
Many emergency pollution events need quick responses for practical use. In this paper, an improved membrane
computing strategy is presented. This strategy is a hybrid one combining the framework and evolution rules of P systems
with active membranes and neural networks, and it involves a dynamic structure including membrane fusion and
division, which helpful to enhance the information communication and beneficial to reduce the computation. Then, a
parallel implementation with the training result is discussed. Experiments with Landsat datasets to obtain suspended
sediment are carried out to demonstrate the practical capabilities of this introduced strategy.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050A (2011) https://doi.org/10.1117/12.901994
A special designed VLSI chip for template matching fundamentally used in automatic target recognition is proposed in
this paper, it adopts normalized cross correlation algorithm. Parallelism inherent in the operation is explored to reduce
the huge needed external bandwidth. As much as 8 large binary templates could be configured into four operation modes
of eight 1-bit, four 2-bit, two 4-bit and one 8-bit templates using partial product scheme and they are processed in
parallel. It takes 13.23ms to execute 120x160 template matching with 256x320 image, therefore is suitable for
real-time applications. The prototype of the chip is emulated on FPGA and also synthesized with Design Compiler, die
area is 3mm x 3.1mm and power consumption is 114.1 mw when operate at 108 MHz.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050B (2011) https://doi.org/10.1117/12.902079
This paper has designed and realized a coarse-grained, unbalanced, modularized parallel embedded software system for
ATR. According to the characteristics of ATR algorithms, some control modules such as system monitoring, task
assignment and hierarchical algorithm modules are realized in our system. There are different design principles for
different modules. The task assignment module combines different modules into clusters based on mutually exclusive
modules, and assigns them to different processors. The principle of combination is the minimum variance of load on
different processors. The system satisfies the requirement of real-time performance due to this reasonable strategy for
task assignment, with the flexibility and scalability significantly improved.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050C (2011) https://doi.org/10.1117/12.902126
A novel line-based streaming labeling algorithm with its VLSI architecture is proposed in this paper. Line-based
neighborhood examination scheme is used for efficient local connected components extraction. A novel reversed rooted
tree hook-up strategy, which is very suitable for hardware implementation, is applied on the mergence stage of
equivalent connected components. The reversed rooted tree hook-up strategy significant reduces the requirement of on-chip
memory, which makes the chip area smaller. Clock domains crossing FIFOs are also applied for connecting the
label core and external memory interface, which makes the label engine working in a higher frequency and raises the
throughput of the label engine. Several performance tests have been performed for our proposed hardware
implementation. The processing bandwidth of our hardware architecture can reach the I/O transfer boundary according to
the external interface clock in all the real image tests. Beside the advantage of reducing the processing time, our
hardware implementation can support the image size as large as 4096*4096, which will be very appealing in remote
sensing or any other high-resolution image applications. The implementation of proposed architecture is synthesized
with SMIC 180nm standard cell library. The work frequency of the label engine reaches 200MHz.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050D (2011) https://doi.org/10.1117/12.902814
In the complex situation of the battlefield, COA (course of action) places an important role. It is required to coordinate
many resources in some actions to achieve the desired purpose in the battle. The main goal of COA is to arrange the
action in the right order and to put the right resource in the right action. The task which is composed of many actions is
always extremely complex. Therefore, COA is actually NP-Hard and a multi-objective optimization problem. It is
difficult to solve this problem by common methods. In this paper, a mechanism of co-evolutionary is introduced to solve
the problem of COA. It deals well with the problems of resource management and action scheduling.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050E (2011) https://doi.org/10.1117/12.902900
According to practical organization of disaster relief goods and materials dispatching activities in China, a novel relief
goods and materials dispatching model for multi-depot and multi-disaster area is established. This model is based on the
multi-level depot priority model and is formalized as a multi-objective optimization problem with the earliest emergency
start time and the least number of participated depots. To approach this model, the particle swarm optimization algorithm
is adopted. We also integrated this model into the disaster relief goods dispatching application successfully and applied
for programming the simulated dispatching plan for Yushu earthquake disaster. The results prove the efficiency of the
proposed model and its intelligent solution approach.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050F (2011) https://doi.org/10.1117/12.903044
Steel code location is the key point to realize billet detection and recognition in production line scene with complex
illumination. However, due to high temperature and complex scene in the rolling line, the steel code location at the end
of billet is quite different from optical character location with simple background and vehicle license plate location. In
the process of billet detection and recognition, how to determine steel code target location at the end of billet from the
complex illumination scene is first necessary in steel intelligent recognition system. In order to solve this problem, a
novel method for steel code location is proposed in this paper. First of all, production line scene image is restrained by
Mean Shift filtering and iterative segmentation filter, and then candidate character region can be found by clustering
character connected domain with same features. At last, the quantitative model is established for candidate region and
the statistical decision algorithm can be used to complete screening object region. The experimental results show that the
proposed location method is very precise in most different scenes.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050K (2011) https://doi.org/10.1117/12.911822
The segmentation of sperm image exerts a profound influence in the analysis of sperm morphology, which plays a
significant role in the research of animals' infertility and reproduction. To overcome the microscope image's properties
of low contrast and highly polluted noise, and to get better segmentation results of sperm image, this paper presents a
multi-scale gradient operator combined with a multi-structuring element for the micro-spermatozoa image of white rat,
as the multi-scale gradient operator can smooth the noise of an image, while the multi-structuring element can retain
more shape details of the sperms. Then, we use the Otsu method to segment the modified gradient image whose gray
scale processed is strong in sperms and weak in the background, converting it into a binary sperm image. As the obtained
binary image owns impurities that are not similar with sperms in the shape, we choose a form factor to filter those
objects whose form factor value is larger than the select critical value, and retain those objects whose not. And then, we
can get the final binary image of the segmented sperms. The experiment shows this method's great advantage in the
segmentation of the micro-spermatozoa image.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050M (2011) https://doi.org/10.1117/12.911892
This paper presents an efficient template matching which is adapted to both the rotated mono- and multi- sensor
images. The proposed method uses the dominant orientation (DO) to estimate the rotation and, use the hill
climbing to search the translation. First, to find the global optimum, climbers are placed all over the reference
image with a constant interval, and each climber is assigned to a unique DO, by which the template rotation
can be estimated at each climber. Then a class-adaptive clustering is introduced and all the climbers/DOs are
clustered into several classes. In each class the template is rotated only once, so the total rotation operations
can be reduced significantly. After the rotation, the hill climbing can be conducted and the global optimum can
be achieved by the highest climber. Our method need not any presetting of the parameters, however, it is robust
and efficient, as shown in experiments.
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Qiwei Xie, Haiyan Wang, Lijun Shen, Xi Chen, Hua Han
Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050N (2011) https://doi.org/10.1117/12.911893
In this paper we propose an image super-resolution algorithm based on Gaussian Mixture Model (GMM) and a new
adaptive image decomposition algorithm. The new image decomposition algorithm uses local extreme of image to
extract the cartoon and oscillating part of image. In this paper, we first decompose an image into oscillating and
piecewise smooth (cartoon) parts, then enlarge the cartoon part with interpolation. Because GMM accurately
characterizes the oscillating part, we specify it as the prior distribution and then formulate the image super-resolution
problem as a constrained optimization problem to acquire the enlarged texture part and finally we obtain a fine result.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050O (2011) https://doi.org/10.1117/12.902071
Medical images have the characteristics of high noise and blurred edges, which makes them difficult to segment using
traditional segmentation methods. The level set algorithm, which is a commonly used method for medical image
segmentation, is restricted in use mainly due to the extremely intensive computation during the iterative contour
evolution. The paper proposes some criteria of loop iteration break for the level set algorithm, making it possible to
adaptively adjust the number of iterations to the specific characteristics of various medical images, so that the contour
evolution can be terminated appropriately. Meanwhile, we change the step length of the iteration according to the
previous loop iteration result, making it possible to decrease the number of iterations needed. To decrease the
computational workload, we also restrict the iteration to a certain part of the image instead of the whole image.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050P (2011) https://doi.org/10.1117/12.901226
This paper presents a fast, precise method for segmenting white blood cell(WBC) based on visual salient features, which
is a two-stage algorithm consisting of adaptive WBC location based on salient map(AWLSM) by simulating the process
of human perception with bottom-up strategies and extract precise cell structure in cell salient attention window(CASW)
using parameter controlled adaptive salient mechanism (PCASM), the first step locates several CASWs in the blood cell
image and the second step is to extract nucleus and cytoplasm accurately in each CASW. The experimental results
demonstrate that the proposed method has sufficient accuracy and speediness to be used in the automatic blood analyzer.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050Q (2011) https://doi.org/10.1117/12.900506
TIRF microscopy is becoming increasingly popular in cell and molecular biology and opens a challenging computer
vision application domain. However, time-lapse images, acquired by TIRF microscopy imaging system suffer the
problem of intensity loss due to photobleaching. In this paper, TIRF images were segmented by a Gaussian mixture
model into foreground and background. Parameters of the model were estimated through the expectation maximization.
Finally, the restored image was wrapped backward to reference frame with the help of foreground parameters. The
experimental results showed that the corrected images were effectively compensated and maintained a relatively constant
intensity along time.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050R (2011) https://doi.org/10.1117/12.900946
Currently, locating the tumor ROI is the prerequisite of feature extraction. However, due to the low contrast and complex
background of ultrasound images it is hard to obtain the accurate tumor ROI. Other organizations often been wrongly
extracted as a tumor region, result in multi-ROI (non-tumor, tumor) in one image. As the result, the performance of
tumor classification algorithms will be poor. In such case, ability to discriminate non-tumor and tumor area of classifier
is of the most important. This paper proposed bag structure constructor on the basis of multi-ROI and multiple instance
learning (MIL) classification algorithm is introduced to solve the above problem that has ability to discriminate non-tumor
and tumor area to some extent. Experiments show that accuracy of the proposed method in such problems is 10%
more than the traditional ultrasonic classification of breast tumor.
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Shan Zhang, Hongbin Han, Zhaoying Liu, Bo Liu, Fugen Zhou
Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050S (2011) https://doi.org/10.1117/12.901917
A new approach of multi-modal medical image registration is proposed to overcome the drawbacks of mutual
information as taking no consideration of the space information, taking all intensities without distinction, and being
sensitive to noise. The proposed method firstly extracts the phase congruencies of the reference and floating image,
secondly, it computes quantitative-qualitative mutual information with the phase congruency mappings, finally, the
geometric transform is optimized by Particle Swarm Optimization. The quantitative-qualitative mutual information used
in our algorithm select the pixels whose utility are larger than the threshold of 1. In addition, Mutual information
incorporating phase congruency assimilates the information of both intensity and space. Experiment results show that our
approach is more robust in suppressing noise and can achieve higher accuracy.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050T (2011) https://doi.org/10.1117/12.901999
MDP (Dirichlet Process Mixtures) model is applied to segment medical images in this paper. Segmentation can been
automatically done without initializing segmentation class numbers. The MDP model segmentation algorithm is used to
segment natural images and MR (Magnetic Resonance) images in the paper. To demonstrate the accuracy of the MDP
model segmentation algorithm, many compared experiments, such as EM (Expectation Maximization) image
segmentation algorithm, K-means image segmentation algorithm and MRF (Markov Field) image segmentation
algorithm, have been done to segment medical MR images. All the methods are also analyzed quantitatively by using
DSC (Dice Similarity Coefficients). The experiments results show that DSC of MDP model segmentation algorithm of
all slices exceed 90%, which show that the proposed method is robust and accurate.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050U (2011) https://doi.org/10.1117/12.902215
Based on mean preserving bi-histogram equalization (BBHE), an adaptive image histogram equalization algorithm for
contrast enhancement is proposed. The threshold is gotten with adaptive iterative steps and used to divide the original
image into two sub-images. The proposed Iterative of Brightness Bi-Histogram Equalization overcomes the
over-enhancement phenomenon in the conventional histogram equalization. The simulation results show that the
algorithm can not only preserve the mean brightness, but also keep the enhancement image information effectively from
visual perception, and get a better edge detection result.
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Yuke Chen, Xiaoming Wu, Rongqian Yang, Shanxin Ou, Ken Cai, Hai Chen
Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050V (2011) https://doi.org/10.1117/12.902418
Computed tomography angiography (CTA) is widely used to assess heart disease, like coronary artery disease. In order
to complete the auto-segmentation of cardiac image of dual-source CT (DSCT) and extract the structure of heart
accurately, this paper proposes a hybrid segmentation method based on k clustering and Graph-Cuts (GC). It identifies
the initial label of pixels by this method. Based on this, it creates the energy function of the label with the knowledge of
anatomic construction of heart and constructs the network diagram. Finally, it minimizes the energy function by the
method of max-flow/min-cut theorem and picks up region of interest. The experiment results indicate that the robust,
accurate segmentation of the cardiac DSCT image can be realized by combining Graph-Cut and k clustering algorithm.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050W (2011) https://doi.org/10.1117/12.902638
This paper presents a novel segmentation method for extracting coronary artery tree from angiogram, which is based on
multiscale Gabor filtering and transition region extraction. Firstly the enhanced image is obtained after multiscale Gabor
filtering, then the transition region of the enhanced image is extracted using the local complexity algorithm, and the final
segmentation threshold is calculated, finally the image segmentation is achieved. To evaluate the performance of the
proposed approach, we carried out experiments on various sets of angiographic images, and compared its effects with
those of the improved top-hat segmentation method. The experiments indicate that the proposed method outperforms the
latter method about better extraction of small vessels, more background elimination, better visualized coronary artery
tree and continuity of the vessels.
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Proceedings Volume MIPPR 2011: Parallel Processing of Images and Optimization and Medical Imaging Processing, 80050X (2011) https://doi.org/10.1117/12.902797
Traditional deformable models provide a global method for image analysis, but these is easily relapsed into a local
optimal in a high noise image and invalid for the image contour with deeply narrow concavities. In this paper, we
proposed a novel deformable model to extract the contour of interested object in medical images in medical images. In
the procedure of the evolvement of contour curve, by introducing the designed image transform operator to derive the
region force from the region information included in the interested object, our method could improve the capacity to
alleviate the sensitivity to image noise and converge into complex boundary. Experiments were performed with synthetic
and medical images and the feasibility and robustness of our method was demonstrated.
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