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Deep Structured Energy Based Models for Anomaly Detection

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In this paper, we attack the anomaly detection problem by directly modeling the data distribution with deep architectures. We propose deep structured energy based models (DSEBMs), where the energy function is the output of a deterministic deep neural network with structure. We develop novel model architectures to integrate EBMs with different types of data such as static data, sequential data, and spatial data, and apply appropriate model architectures to adapt to the data structure. Our training algorithm is built upon the recent development of score matching \cite{sm}, which connects an EBM with a regularized autoencoder, eliminating the need for complicated sampling method. Statistically sound decision criterion can be derived for anomaly detection purpose from the perspective of the energy landscape of the data distribution. We investigate two decision criteria for performing anomaly detection: the energy score and the reconstruction error. Extensive empirical studies on benchmark tasks demonstrate that our proposed model consistently matches or outperforms all the competing methods.

Shuangfei Zhai, Yu Cheng, Weining Lu, Zhongfei Zhang• 2016

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionCIFAR-10--
120
Anomaly DetectionCIFAR-10 32x32x3
AUROC0.739
87
Anomaly DetectionCIFAR-100
AUROC58.8
72
Anomaly DetectionMNIST (test)
AUC95.54
65
Anomaly DetectionMVTecAD (test)
Bottle Score81.8
55
Anomaly DetectionMVTec AD
Carpet AUROC41.3
40
Anomaly DetectionFashion MNIST--
40
Anomaly DetectionCIFAR-10 32x32x3 (test)
AUPR (Class 0)91.3
25
Anomaly DetectionCIFAR-10 32x32x3 (test)
AUPR (Inliers)0.144
16
Anomaly DetectionMTD (test)
AUROC0.572
14
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