Stacked autoencoders for medical image search

S Sharma, I Umar, L Ospina, D Wong… - Advances in Visual …, 2016 - Springer
S Sharma, I Umar, L Ospina, D Wong, HR Tizhoosh
Advances in Visual Computing: 12th International Symposium, ISVC 2016, Las …, 2016Springer
Medical images can be a valuable resource for reliable information to support medical
diagnosis. However, the large volume of medical images makes it challenging to retrieve
relevant information given a particular scenario. To solve this challenge, content-based
image retrieval (CBIR) attempts to characterize images (or image regions) with invariant
content information in order to facilitate image search. This work presents a feature
extraction technique for medical images using stacked autoencoders, which encode images …
Abstract
Medical images can be a valuable resource for reliable information to support medical diagnosis. However, the large volume of medical images makes it challenging to retrieve relevant information given a particular scenario. To solve this challenge, content-based image retrieval (CBIR) attempts to characterize images (or image regions) with invariant content information in order to facilitate image search. This work presents a feature extraction technique for medical images using stacked autoencoders, which encode images to binary vectors. The technique is applied to the IRMA dataset, a collection of 14,410 x-ray images in order to demonstrate the ability of autoencoders to retrieve similar x-rays given test queries. Using IRMA dataset as a benchmark, it was found that stacked autoencoders gave excellent results with a retrieval error of 376 for 1,733 test images with a compression of 74.61%.
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