CVMar 6, 2019

Hybrid LSTM and Encoder-Decoder Architecture for Detection of Image Forgeries

arXiv:1903.02495v1409 citations
AI Analysis

This addresses the challenge of identifying visually imperceptible image manipulations for applications in digital forensics and media verification, representing an incremental improvement with a novel hybrid method.

The paper tackles the problem of detecting and localizing image forgeries, such as copy-clone and splicing, by proposing a hybrid LSTM and encoder-decoder architecture that achieves high precision in pixel-level manipulation localization, as demonstrated through experimentation on three diverse datasets.

With advanced image journaling tools, one can easily alter the semantic meaning of an image by exploiting certain manipulation techniques such as copy-clone, object splicing, and removal, which mislead the viewers. In contrast, the identification of these manipulations becomes a very challenging task as manipulated regions are not visually apparent. This paper proposes a high-confidence manipulation localization architecture which utilizes resampling features, Long-Short Term Memory (LSTM) cells, and encoder-decoder network to segment out manipulated regions from non-manipulated ones. Resampling features are used to capture artifacts like JPEG quality loss, upsampling, downsampling, rotation, and shearing. The proposed network exploits larger receptive fields (spatial maps) and frequency domain correlation to analyze the discriminative characteristics between manipulated and non-manipulated regions by incorporating encoder and LSTM network. Finally, decoder network learns the mapping from low-resolution feature maps to pixel-wise predictions for image tamper localization. With predicted mask provided by final layer (softmax) of the proposed architecture, end-to-end training is performed to learn the network parameters through back-propagation using ground-truth masks. Furthermore, a large image splicing dataset is introduced to guide the training process. The proposed method is capable of localizing image manipulations at pixel level with high precision, which is demonstrated through rigorous experimentation on three diverse datasets.

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