In this paper, we present a novel color edgedetection method that integrates collaborative filtering with multiscale gradient fusion. The Block-Matching and 3D (BM3D) filter is utilized to enhance sparse representati...
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In this paper, we present a novel color edgedetection method that integrates collaborative filtering with multiscale gradient fusion. The Block-Matching and 3D (BM3D) filter is utilized to enhance sparse representations in the transform domain, effectively reducing noise. The multiscale gradient fusion technique compensates for the loss of detail in single-scale edgedetection, thereby improving both edge resolution and overall quality. RGB images from the dataset are converted into the XYZ color space through mathematical transformations. The Colored Block-Matching and 3D (CBM3D) filter is applied to the sparse images to reduce noise. Next, the vector gradients of the color image and anisotropic Gaussian directional derivatives for two scale parameters are computed. These are then averaged pixel-by-pixel to generate a refined edge strength map. To enhance the edge features, the image undergoes normalization and non-maximum suppression. This is followed by edge contour extraction using double-thresholding and a novel morphological refinement technique. Experimental results on the edgedetection dataset demonstrate that the proposed method offers robust noise resistance and superior edge quality, outperforming traditional methods such as Color Sobel, Color Canny, SE, and Color AGDD, as evidenced by performance metrics including the PR curve, AUC, PSNR, MSE, and FOM.
This research investigates the implementation of real-time aerial image edge detection using the Canny edgedetection algorithm with the MicroWatt Power Instruction Set Architecture (ISA)-Open Core Processor on Field ...
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ISBN:
(数字)9798331515911
ISBN:
(纸本)9798331515928
This research investigates the implementation of real-time aerial image edge detection using the Canny edgedetection algorithm with the MicroWatt Power Instruction Set Architecture (ISA)-Open Core Processor on Field Programmable Gate Arrays (FPGAs). Canny edgedetection is particularly advantageous for aerial image processing due to its ability to produce precise and well-defined edges, making it ideal for applications in surveillance, agriculture, and environmental monitoring where detail preservation is critical. The proposed system utilizes the MicroWatt Power ISA-Open core processor to optimize resource utilization, achieving high throughput and low latency while maintaining energy efficiency. The work uses the Xilinx Vivado EDA tool to calculate the power dissipation of the FPGA implementation, demonstrating significant reductions in power consumption compared to traditional processing methods. The experimental results showcase the effectiveness of the Canny edge detector in producing accurate edge maps while minimizing resource usage, thus enabling real-time processing capabilities. This work contributes to the advancement of low-power embedded systems for aerial imaging, highlighting the potential of FPGAs combined with the MicroWatt Power ISA for efficient and effective image analysis.
The measurement and monitoring of tool condition are keys to the product precision in the automated manufacturing. To meet the need, this study proposes a novel tool wear monitoring approach based on the monitored ima...
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The measurement and monitoring of tool condition are keys to the product precision in the automated manufacturing. To meet the need, this study proposes a novel tool wear monitoring approach based on the monitored image edge detection. image edge detection has been a fundamental tool to obtain features of images. This approach extracts the tool edge with morphological component analysis. Through the decomposition of original tool wear image, the approach reduces the influence of texture and noise for edge measurement. Based on the target image sparse representation and edgedetection, the approach could accurately extract the tool wear edge with continuous and complete contour, and is convenient in charactering tool conditions. Compared to the celebrated algorithms developed in the literature, this approach improves the integrity and connectivity of edges, and the results have shown that it achieves better geometry accuracy and lower error rate in the estimation of tool conditions. (C) 2017 ISA. Published by Elsevier Ltd. All rights reserved.
Recent advancements in the development of memristive devices has opened new opportunities for hardware implementation of new computing models. Researchers have shown the suitability of memristive devices for swarm int...
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Recent advancements in the development of memristive devices has opened new opportunities for hardware implementation of new computing models. Researchers have shown the suitability of memristive devices for swarm intelligence algorithms to solve a maze in hardware. In this paper, we utilize swarm intelligence of memristive networks to perform image edge detection. First, we propose a hardware-friendly algorithm for image edge detection based on ant colony optimization. Second, we implement the image edge detection algorithm using memristive networks. Furthermore, we explain the impact of various parameters of the memristors on the efficacy of the implementation. Our results show 28% improvement in the energy compared to a low power CMOS hardware implementation based on stochastic circuits. Furthermore, our design occupies up to 5 x less area.
A new method for image edge detection based on a pulse neural network is proposed in this paper. The network is locally connected. The external input of each neuron of the network is gray value of the corresponding pi...
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A new method for image edge detection based on a pulse neural network is proposed in this paper. The network is locally connected. The external input of each neuron of the network is gray value of the corresponding pixel. The synchrony of the neuron and its neighbors is detected by detection neurons. The edge of the image can be read off at minima of the total activity of the detection neurons.
In order to realize the leading role of machine vision in intelligent cargo handling of the robot, a fusion method of visual image edge detection based on wavelet transform and mathematical morphology is proposed. Tha...
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ISBN:
(纸本)9781509022182
In order to realize the leading role of machine vision in intelligent cargo handling of the robot, a fusion method of visual image edge detection based on wavelet transform and mathematical morphology is proposed. That wavelet transform is used for image edge detection exists missing detection, smoothness and weak edge problem. So an improved method needs to be studied, in which a wavelet transform and improved mathematical morphology are respectively used to extract the edge of the original image, and then a fusion of two methods is done to obtain a better edgedetection after threshold processing. Comparing the proposed algorithm with several classical edgedetection algorithms, the experimental result shows that edgedetection method proposed in this paper can effectively reduce the influence of noise and to a certain extent enhance the weakening edge, improve the accuracy of the imagedetection.
The Pulse coupled neural network (PCNN) has been widely used in digital image processing, but the automatic parameters determination is still a difficult aspect, which becomes the focus of PCNN research. In this paper...
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The Pulse coupled neural network (PCNN) has been widely used in digital image processing, but the automatic parameters determination is still a difficult aspect, which becomes the focus of PCNN research. In this paper, by the classical solution to difference equations and the time-domain analysis of PCNN model, we provide the expressions of the firing time and the firing period of neurons, and reveal the “mathematics firing” phenomenon of PCNN. Based on this, we propose a new method of automatic parameters determination based on both eliminating the “mathematics firing” and getting the highest efficiency of PCNN. We also present an edgedetection model on the basis of image segmentation of PCNN and a method to determine automatically the parameters of the model. Experimental results prove the validity and efficiency of our proposed algorithm for the segmentation and the edgedetection of the test images.
The existing algorithms of image edge detection based on space domain can effectively detect the edge of the image in limited direction. In order to solve this problem, according to the direction information and gradi...
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ISBN:
(纸本)9781479942626
The existing algorithms of image edge detection based on space domain can effectively detect the edge of the image in limited direction. In order to solve this problem, according to the direction information and gradient direction information obtained from each directional subband of the Contourlet transform subband, this paper proposes a new algorithm of Based on Contourlet transform combined with anisotropic receptive field model of image edge detection. This algorithm firstly carries Contourlet transform on the original image, and detects the edge on each scale. It compensates and corrects the imageedge with high and low frequency respectively. Finally, the edgeimage is obtained by choosing the coefficient of absolute value maximum. The experimental results show that this algorithm is a new way with continuous edge and accurate positioning, which reduces the false edge.
In this paper,an image edge detection method based on multi-fractal spectrum analysis is *** coarse grain Holder&&exponent of the image pixels is first ***,its multi-fractal spectrum is estimated by the kernel...
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In this paper,an image edge detection method based on multi-fractal spectrum analysis is *** coarse grain Holder&&exponent of the image pixels is first ***,its multi-fractal spectrum is estimated by the kernel estimation ***,the image edge detection is done by means of different multi-fractal spectrum *** results show that this method is efficient and has better locality compared with the traditional edgedetection methods such as the Sobel method.
We introduce a novel approach for image edge detection based on calculating pseudo-Boolean polynomials on image patches whose resulting polynomial degrees determine whether a patch lies over an edge or a blob. In this...
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ISBN:
(纸本)9781510674639;9781510674622
We introduce a novel approach for image edge detection based on calculating pseudo-Boolean polynomials on image patches whose resulting polynomial degrees determine whether a patch lies over an edge or a blob. In this paper we show that patches covering edge regions within the image result in pseudo-Boolean polynomials of higher degrees compared to patches that cover blob regions. The proposed approach is based on reduction of polynomial degree and equivalence properties of penalty-based pseudo-Boolean polynomials.
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