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CellProfiler is designed for biologists without training in computer vision or programming to quantitatively measure cells in thousands of images automatically. It has a user-friendly graphical interface.
CellProfiler has a modular, flexible infras
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OpenCV库的Matlab函数封装调用
cvlib_mex封装了OpenCV库大约30个函数,OpenCV是当前流行的实时计算机视觉库,拥有很多的图像处理的算法。-cvlib_mex is a collection (over two dozens) of matlab callable routines from the OpenCV library www.intel.com/research/mrl/research/opencv/). OpenCV is a real time
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MATLAB and Octave Functions for Computer Vision and Image Processing.
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Gradient information serves several purposes. It can relate
the structure of objects in an image, identify features of interest
for recognition/classification directly or provide the basis of further
processing for various computer vision
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Yuri Boykov s and Vladimir Kolmogorov s work on graph cuts and MRF optimization has been extensively cited in the academia, and their maximum flow implementation is widely used in computer vision and image processing research.
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小波域内去噪滤波器matlab代码(MATLAB 图像处理与计算机视觉 )-Wavelet domain denoising filter matlab code (MATLAB image processing and computer vision)
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数字图像处理与机器视觉-visual C++与matlab实现,第十一章配套源程序-Digital image processing and machine vision of-visual C++ and MATLAB, the 11th chapter matching source
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数字图像处理与机器视觉-visual C++与matlab实现,第10章配套源程序-Digital image processing and machine vision of-visual C++ and MATLAB, the 10th chapter matching source
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数字图像处理与机器视觉-visual C++与matlab实现,第9章配套源程序-Digital image processing and machine vision of-visual C++ and MATLAB, the 9th chapter matching source
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数字图像处理与机器视觉-visual C++与matlab实现,第8章配套源程序-Digital image processing and machine vision of-visual C++ and MATLAB, the 8th chapter matching source
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DeepLearnToolbox_CNN_lzbV2.0
深度学习,卷积神经网络,Matlab工具箱
参考文献:
[1] Notes on Convolutional Neural Networks. Jake Bouvrie. 2006
[2] Gradient-Based Learning Applied to Document Recognition. Yann LeCun. 1998
[3] https://github.com/rasmusberg
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