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Papers/The 2021 Image Similarity Dataset and Challenge

The 2021 Image Similarity Dataset and Challenge

Matthijs Douze, Giorgos Tolias, Ed Pizzi, Zoë Papakipos, Lowik Chanussot, Filip Radenovic, Tomas Jenicek, Maxim Maximov, Laura Leal-Taixé, Ismail Elezi, Ondřej Chum, Cristian Canton Ferrer

2021-06-17MisinformationCopy DetectionImage Similarity Detection
PaperPDFCode(official)

Abstract

This paper introduces a new benchmark for large-scale image similarity detection. This benchmark is used for the Image Similarity Challenge at NeurIPS'21 (ISC2021). The goal is to determine whether a query image is a modified copy of any image in a reference corpus of size 1~million. The benchmark features a variety of image transformations such as automated transformations, hand-crafted image edits and machine-learning based manipulations. This mimics real-life cases appearing in social media, for example for integrity-related problems dealing with misinformation and objectionable content. The strength of the image manipulations, and therefore the difficulty of the benchmark, is calibrated according to the performance of a set of baseline approaches. Both the query and reference set contain a majority of "distractor" images that do not match, which corresponds to a real-life needle-in-haystack setting, and the evaluation metric reflects that. We expect the DISC21 benchmark to promote image copy detection as an important and challenging computer vision task and refresh the state of the art. Code and data are available at https://github.com/facebookresearch/isc2021

Results

TaskDatasetMetricValueModel
Image Similarity DetectionDISC21 devTime (ms)150HOW+ASMK
Image Similarity DetectionDISC21 devw/o normalization17.32HOW+ASMK
Image Similarity DetectionDISC21 devwith normalization37.15HOW+ASMK
Image Similarity DetectionDISC21 devTime (ms)23Multigrain 1500 dim
Image Similarity DetectionDISC21 devdimension1500Multigrain 1500 dim
Image Similarity DetectionDISC21 devw/o normalization16.47Multigrain 1500 dim
Image Similarity DetectionDISC21 devwith normalization36.42Multigrain 1500 dim
Image Similarity DetectionDISC21 devdimension256GIST PCA 256
Image Similarity DetectionDISC21 devw/o normalization15.56GIST PCA 256
Image Similarity DetectionDISC21 devTime (ms)0.55GIST 960 dim
Image Similarity DetectionDISC21 devdimension960GIST 960 dim
Image Similarity DetectionDISC21 devw/o normalization14.42GIST 960 dim

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