资源论文QUANTIFYING THE COST OF RELIABLE PHOTO AU -THENTICATION VIA HIGH -P ERFORMANCE LEARNEDL OSSY REPRESENTATIONS

QUANTIFYING THE COST OF RELIABLE PHOTO AU -THENTICATION VIA HIGH -P ERFORMANCE LEARNEDL OSSY REPRESENTATIONS

2020-01-02 | |  72 |   45 |   0

Abstract

Detection of photo manipulation relies on subtle statistical traces, notoriously removed by aggressive lossy compression employed online. We demonstrate that end-to-end modeling of complex photo dissemination channels allows for codec optimization with explicit provenance objectives. We design a lightweight trainable lossy image codec, that delivers good rate-distortion performance, comparable with the popular hand-crafted BPG, and has low computational footprint on modern GPU-enabled platforms. Our results show that significant improvements in manipulation detection accuracy are possible at fractional costs in bandwidth/storage. Our codec improved the accuracy from 37% to 86% even at very low bit-rates, well below the practicality of JPEG (QF 20).

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