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https://hdl.handle.net/2440/135885
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Type: | Conference paper |
Title: | Constrained Contrastive Distribution Learning for Unsupervised Anomaly Detection and Localisation in Medical Images |
Author: | Tian, Y. Pang, G. Liu, F. Chen, Y. Shin, S.-H. Verjans, J.W. Singh, R. Carneiro, G. |
Citation: | Lecture Notes in Artificial Intelligence, 2021 / deBruijne, M., Cattin, P.C., Cotin, S., Padoy, N., Speidel, S., Zheng, Y., Essert, C. (ed./s), vol.12905, pp.128-140 |
Publisher: | Springer |
Publisher Place: | Cham, Switzerland |
Issue Date: | 2021 |
Series/Report no.: | Lecture Notes in Computer Science; 12905 |
ISBN: | 9783030872397 |
ISSN: | 0302-9743 1611-3349 |
Conference Name: | Medical Image Computing and Computer Assisted Intervention (MICCAI) (27 Sep 2021 - 1 Oct 2021 : virtual online) |
Editor: | deBruijne, M. Cattin, P.C. Cotin, S. Padoy, N. Speidel, S. Zheng, Y. Essert, C. |
Statement of Responsibility: | Yu Tian, Guansong Pang, Fengbei Liu, Yuanhong Chen, Seon Ho Shin, Johan W. Verjans, Rajvinder Singh, and Gustavo Carneiro |
Abstract: | Unsupervised anomaly detection (UAD) learns one-class classifiers exclusively with normal (i.e., healthy) images to detect any abnormal (i.e., unhealthy) samples that do not conform to the expected normal patterns. UAD has two main advantages over its fully supervised counterpart. Firstly, it is able to directly leverage large datasets available from health screening programs that contain mostly normal image samples, avoiding the costly manual labelling of abnormal samples and the subsequent issues involved in training with extremely class-imbalanced data. Further, UAD approaches can potentially detect and localise any type of lesions that deviate from the normal patterns. One significant challenge faced by UAD methods is how to learn effective low-dimensional image representations to detect and localise subtle abnormalities, generally consisting of small lesions. To address this challenge, we propose a novel self-supervised representation learning method, called Constrained Contrastive Distribution learning for anomaly detection (CCD), which learns fine-grained feature representations by simultaneously predicting the distribution of augmented data and image contexts using contrastive learning with pretext constraints. The learned representations can be leveraged to train more anomaly-sensitive detection models. Extensive experiment results show that our method outperforms current state-of-the-art UAD approaches on three different colonoscopy and fundus screening datasets. Our code is available at https://github.com/tianyu0207/CCD. |
Keywords: | Anomaly detection; Unsupervised learning; Lesion detection and segmentation; Self-supervised pre-training; Colonoscopy |
Rights: | © Springer Nature Switzerland AG 2021 |
DOI: | 10.1007/978-3-030-87240-3_13 |
Published version: | https://link.springer.com/book/10.1007/978-3-030-87240-3 |
Appears in Collections: | Aurora harvest 4 Computer Science publications |
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