Decomposing Normal and Abnormal Features of Medical Images for Content-based Image Retrieval

11/12/2020
by   Kazuma Kobayashi, et al.
0

Medical images can be decomposed into normal and abnormal features, which is considered as the compositionality. Based on this idea, we propose an encoder-decoder network to decompose a medical image into two discrete latent codes: a normal anatomy code and an abnormal anatomy code. Using these latent codes, we demonstrate a similarity retrieval by focusing on either normal or abnormal features of medical images.

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