TY - JOUR AU - Minhas, Manpreet Singh AU - Zelek, John PY - 2020/01/02 Y2 - 2024/03/29 TI - Semi-supervised Anomaly Detection using AutoEncoders JF - Journal of Computational Vision and Imaging Systems JA - J. Comp. Vis. Imag. Sys. VL - 5 IS - 1 SE - Articles DO - UR - https://openjournals.uwaterloo.ca/index.php/vsl/article/view/1654 SP - 3 AB - <p>Anomaly detection refers to the task of finding unusual instances<br>that stand out from the normal data. In several applications, these<br>outliers or anomalous instances are of greater interest compared to<br>the normal ones. Specifically in the case of industrial optical inspection and infrastructure asset management, finding these defects<br>(anomalous regions) is of extreme importance. Traditionally and<br>even today this process has been carried out manually. Humans<br>rely on the saliency of the defects in comparison to the normal texture to detect the defects. However, manual inspection is slow, tedious, subjective and susceptible to human biases. Therefore, the<br>automation of defect detection is desirable. But for defect detection<br>lack of availability of a large number of anomalous instances and<br>labelled data is a problem. In this paper, we present a convolutional<br>auto-encoder architecture for anomaly detection that is trained only<br>on the defect-free (normal) instances. For the test images, residual masks that are obtained by subtracting the original image from<br>the auto-encoder output are thresholded to obtain the defect segmentation masks. The approach was tested on two data-sets and<br>achieved an impressive average F1 score of 0.885. The network<br>learnt to detect the actual shape of the defects even though no defected images were used during the training.</p> ER -