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Medical Image Retrieval Based on the Deep Convolution Network and Hash Coding

机译:基于深度卷积网络和哈希编码的医学图像检索

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Recent years CNN (Convolutional Neural Network) has performed well in image processing, including image retrieval. However, since the features of CNN extraction are usually high-dimensional, and in the massive data conditions, it is a rather time-consuming process to traverse all the images and calculate the distance between the feature vectors to accurately find the closest Top K images. The proposed paper uses an effective deep learning framework in which Deep Convolution Network is combined with Hash Coding to learn rich medical image representing through CNN. First, a hash layer is added to the network to represent the image information as binary hashing codes; Simultaneously, the dimension of feature vector is effectively reduced by the framework; then, In order to improve the accuracy of image retrieval, rough searching and fine searching are combined. The experimental results show that our method is optimal than several hashing algorithms and CNN methods on the TCIA-CT database and VIA/I-ELCAP database.
机译:近年来CNN(卷积神经网络)在图像处理中表现良好,包括图像检索。然而,由于CNN提取的特征通常是高维的,并且在大规模的数据条件中,它是遍历所有图像的相当耗时的过程,并计算特征向量之间的距离,以准确地找到最接近的顶部K图像。拟议的论文使用了一个有效的深度学习框架,其中深度卷积网络与哈希编码相结合,以学习通过CNN代表的丰富的医学图像。首先,将散列层添加到网络中以将图像信息表示为二进制散列码;同时,框架有效地减少了特征向量的尺寸;然后,为了提高图像检索的准确性,组合粗糙搜索和精细搜索。实验结果表明,我们的方法比TCIA-CT数据库和VIA / I-ELCAP数据库上的几个散列算法和CNN方法最优。

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