Constrained Image Splicing Detection and Localization with Attention-Aware Encoder-Decoder and Atrous Convolution

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Abstract

Constrained image splicing detection and localization (CISDL) is a newly formulated image forensics task and plays an important role in verifying the generating process of a forged image. CISDL conducts dense matching between two investigated images and detects whether one image has forged regions pasted from the other. In this work, we introduce a novel attention-aware encoder-decoder deep matching network named as AttentionDM for CISDL. An encoder-decoder with atrous convolution is newly designed for hierarchical features dense matching and fine-grained masks generation. A novel attention-aware correlation computation module is built on normalization operations and informative features recalibration with channel attention blocks. Last but not least, VGG and ResNets are respectively formulated as feature extractors for comprehensive comparisons in CISDL. Extensive experiments demonstrate the superior performance of AttentionDM over the state-of-the-art methods.

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Liu, Y., & Zhao, X. (2020). Constrained Image Splicing Detection and Localization with Attention-Aware Encoder-Decoder and Atrous Convolution. IEEE Access, 8, 6729–6741. https://doi.org/10.1109/ACCESS.2019.2963745

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