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IMAGE FEATURE LEARNING DEVICE, IMAGE FEATURE LEARNING METHOD, IMAGE FEATURE EXTRACTION DEVICE, IMAGE FEATURE EXTRACTION METHOD, AND PROGRAM

机译:图像特征学习设备,图像特征学习方法,图像特征提取装置,图像特征提取方法和程序

摘要

The purpose of the present invention is to enable learning of a neural network for extracting features of images having high robustness from an undiscriminating image region while minimizing the number of parameters of a pooling layer. A parameter learning unit 130 learns parameters of each layer in a convolutional neural network configured by including a fully convolutional layer for performing convolution of an input image to output a feature tensor of the input image, a weighting matrix estimation layer for estimating a weighting matrix indicating a weighting of each element of the feature tensor, and a pooling layer for extracting a feature vector of the input image based on the feature tensor and the weighting matrix. The parameter learning unit 130 learns the parameters such that a loss function value obtained by calculating a loss function expressed by using a distance between a first feature vector of a first image and a second feature vector of a second image, which are relevant images and are obtained by applying the convolutional neural network, becomes smaller.
机译:本发明的目的是能够在最小化池层的参数的数量的同时,实现用于提取具有高稳健性的图像的特征的神经网络,同时最小化池池层的数量。参数学习单元 130 在卷积神经网络中学习通过包括用于执行输入图像的卷积以输出输入图像的特征扭转的完全卷积的神经网络中的每个层的参数,加权矩阵估计用于估计指示特征Tensor的每个元素的加权的加权矩阵的层,以及基于特征张量和加权矩阵来提取输入图像的特征向量的池化层。参数学习单元 130 学习参数,使得通过使用第一图像的第一特征向量和第二图像的第二特征向量之间的第一特征向量之间的距离来计算丢失功能值而获得的丢失功能值,这是相关图像并且通过应用卷积神经网络而获得,变小。

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