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Deep Semantics-Preserving Hashing Based Skin Lesion Image Retrieval

机译:基于深度语义保留哈希的皮肤病变图像检索

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This study proposes a content-based pigmented skin lesion image retrieval scheme on semantic hash clustering on the output of the deep neural networks. The skin lesion images are acquired with standard digital cameras or mobile phones. To retrieval skin lesion images efficiently online, semi-supervised deep convolutional neural network incorporated with hash functions jointly learn feature representations, for preserving similar semantics between skin lesion images, and mappings to hash codes. The target candidates are clustered by Affinity Propagation (AP) for ranking, which are selected among the outputs of layer F7 based on the Hamming distance of their semantic hash codes. Experiments on 4 disease categories of pigmented skin lesions of a set of 239 images yielded a specificity of 93.4% and a sensitivity of 80.89%.
机译:这项研究提出了基于内容的色素性皮肤病变图像检索方案,该方案基于深度神经网络的输出进行语义哈希聚类。使用标准的数码相机或手机获取皮肤病变图像。为了有效地在线检索皮肤病变图像,结合哈希函数的半监督深度卷积神经网络共同学习特征表示,以保留皮肤病变图像之间的相似语义,并映射到哈希码。目标候选者通过亲和传播(AP)进行聚类以进行排名,并根据其语义哈希码的汉明距离在层F7的输出中进行选择。对一组239张图像的色素性皮肤病变的4种疾病类别进行的实验得出的特异性为93.4%,灵敏度为80.89%。

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