SOTAVerified

Deep Nearest Neighbor Anomaly Detection

2020-02-24Unverified0· sign in to hype

Liron Bergman, Niv Cohen, Yedid Hoshen

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Nearest neighbors is a successful and long-standing technique for anomaly detection. Significant progress has been recently achieved by self-supervised deep methods (e.g. RotNet). Self-supervised features however typically under-perform Imagenet pre-trained features. In this work, we investigate whether the recent progress can indeed outperform nearest-neighbor methods operating on an Imagenet pretrained feature space. The simple nearest-neighbor based-approach is experimentally shown to outperform self-supervised methods in: accuracy, few shot generalization, training time and noise robustness while making fewer assumptions on image distributions.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
Anomaly Detection on Anomaly Detection on Unlabeled ImageNet-30 vs Flowers-102DN2 CLIP ViTROC-AUC93.2Unverified
Anomaly Detection on Unlabeled ImageNet-30 vs CUB-200DN2 CLIP ViTROC-AUC93.8Unverified
One-class CIFAR-10DN2AUROC92.5Unverified

Reproductions