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METHODS FOR LEARNING PARAMETERS OF A CONVOLUTIONAL NEURAL NETWORK, FOR DETECTING VISIBLE ELEMENTS OF INTEREST IN AN IMAGE AND ASSOCIATION OF ELEMENTS OF INTEREST VISIBLE IN AN IMAGE
METHODS FOR LEARNING PARAMETERS OF A CONVOLUTIONAL NEURAL NETWORK, FOR DETECTING VISIBLE ELEMENTS OF INTEREST IN AN IMAGE AND ASSOCIATION OF ELEMENTS OF INTEREST VISIBLE IN AN IMAGE
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机译:学习卷积神经网络参数的方法,用于检测图像中的可见元素和图像中的可见元素关联
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摘要
The present invention relates to a method for learning parameters of a convolutional neural network, CNN, by data processing means (11a, 11b, 11c) of at least one server (1a, 1b, 1c), for detection of elements of interest visible in images, from at least one base of training images in which said elements of interest as well as characteristic geometric structures are already annotated, the CNN comprising a layer d encoding for the generation of a representation vector of the elements of interest detected, the method being characterized in that said representation vector comprises, for at least a first category of element of interest to be detected, at least one value descriptive of at least one geometric structure characteristic of said first category of element of interest. The present invention also relates to a method of detecting elements of interest vi sibles in an image and a method of associating elements of interest visible in an image.
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