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Outliers resistant image classification by anomaly detection

Authors :
Sergeev, Anton
Minchenkov, Victor
Soldatov, Aleksei
Kakurin, Vasiliy
Mazikov, Yaroslav
Publication Year :
2024

Abstract

Various technologies, including computer vision models, are employed for the automatic monitoring of manual assembly processes in production. These models detect and classify events such as the presence of components in an assembly area or the connection of components. A major challenge with detection and classification algorithms is their susceptibility to variations in environmental conditions and unpredictable behavior when processing objects that are not included in the training dataset. As it is impractical to add all possible subjects in the training sample, an alternative solution is necessary. This study proposes a model that simultaneously performs classification and anomaly detection, employing metric learning to generate vector representations of images in a multidimensional space, followed by classification using cross-entropy. For experimentation, a dataset of over 327,000 images was prepared. Experiments were conducted with various computer vision model architectures, and the outcomes of each approach were compared.<br />Comment: 19 pages, in Russian

Details

Language :
Russian
Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.10150
Document Type :
Working Paper