learning dual data representations for anomaly detection in images
Marija Ivanovska (Author), Vitomir Štruc (Author)

Abstract

We propose a novel reconstruction-based model for anomaly detection in image data, called ’Y-GAN’. The model consists of a Y-shaped auto-encoder and represents images in two separate latent spaces. The first captures meaningful image semantics, which are key for representing (normal) training data, whereas the second encodes low-level residual image characteristics. To ensure the dual representations encode mutually exclusive information, a disentanglement procedure is designed around a latent (proxy) classifier. Additionally, a novel representation-consistency mechanism is proposed to prevent information leakage between the latent spaces. The model is trained in a one-class learning setting using only normal training data. Due to the separation of semantically-relevant and residual information, Y-GAN is able to derive informative data representations that allow for efficacious anomaly detection across a diverse set of anomaly detection tasks. The model is evaluated in comprehensive experiments with several recent anomaly detection models using four popular image datasets, i.e., MNIST, FMNIST, CIFAR10, and PlantVillage. Experimental results show that Y-GAN outperforms all tested models by a considerable margin and yields state-of-the-art results. The source code for the model is made publicly available at https://github.com/MIvanovska/Y-GAN.

Keywords

detekcija anomalij;enorazredno učenje;globoko učenje;anomaly detection;pone-class learning;deeplearning;

Data

Language: English
Year of publishing:
Typology: 1.01 - Original Scientific Article
Organization: UL FE - Faculty of Electrical Engineering
UDC: 004.93
COBISS: 184821507 Link will open in a new window
ISSN: 1873-6793
Views: 80
Downloads: 33
Average score: 0 (0 votes)
Metadata: JSON JSON-RDF JSON-LD TURTLE N-TRIPLES XML RDFA MICRODATA DC-XML DC-RDF RDF

Other data

Secondary language: Slovenian
Secondary keywords: detekcija anomalij;enorazredno učenje;globoko učenje;
Type (COBISS): Article
Pages: 17 str.
Issue: ǂVol. ǂ248, [article no.] 123410
Chronology: 15 Avg. 2024
DOI: 10.1016/j.eswa.2024.123410
ID: 23628106
Recommended works:
, learning dual data representations for anomaly detection in images
, no subtitle data available
, no subtitle data available