Autoencoding the Retrieval Relevance of Medical Images
Zehra Camlica, H.R. Tizhoosh, Farzad Khalvati

TL;DR
This paper introduces a method to reduce feature dimensionality in medical image retrieval systems by excluding low-error image blocks, resulting in faster retrieval with minimal accuracy loss.
Contribution
It proposes a novel autoencoder-based approach to identify relevant image regions, improving retrieval efficiency in large medical image datasets.
Findings
Dimensionality reduction up to 50%
Retrieval speed increased by over 27%
Less than 1% decrease in retrieval accuracy
Abstract
Content-based image retrieval (CBIR) of medical images is a crucial task that can contribute to a more reliable diagnosis if applied to big data. Recent advances in feature extraction and classification have enormously improved CBIR results for digital images. However, considering the increasing accessibility of big data in medical imaging, we are still in need of reducing both memory requirements and computational expenses of image retrieval systems. This work proposes to exclude the features of image blocks that exhibit a low encoding error when learned by a autoencoder (). We examine the histogram of autoendcoding errors of image blocks for each image class to facilitate the decision which image regions, or roughly what percentage of an image perhaps, shall be declared relevant for the retrieval task. This leads to reduction of feature dimensionality and speeds up…
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