Image Manipulation Localization Using Dual-Shallow Feature Pyramid Fusion and Boundary Contextual Incoherence Enhancement

Abstract

This paper proposes a novel end-to-end network for Image Manipulation Localization (IML) comprising three modules: feature fusion, encoder, and decoder. To address the limitations of current DNN-based IML algorithms in accessing global features and segmenting tampered edges, we propose a Dual-shallow Feature Pyramid Fusion (DFPF) module. The DFPF module integrates semantic and texture features through a bidirectional pathway, forming RGB Feature Pyramids (RGBFP) and Local Textual Feature Pyramids (LTFP) using dual Hybrid ResNet50s in a ’Siamese' configuration. These feature pyramids are merged via multi-scale fusion to enhance global pyramid features for decoding. The LTFP branch includes a Pre-processing Block, Parallel Multi-Scale Convolution (PMSC), or Channel Split High-frequency Convolution (CSHC) to capture local textual features and subtle manipulation traces. The Encoder employs Transformer layers for robust global representations. At the same time, the Decoder uses Cascaded Boundary Context Inconsistent Enhancement (BCIE) Blocks to reconstruct a coarse-to-fine binary mask, enhancing texture inconsistencies at manipulated region boundaries. Additionally, we introduce an automated method for generating a large-scale forgery dataset via Photoshop Scripting, reducing labor costs. Our model effectively locates tampered regions of various shapes and sizes, improving boundary anomaly detection. Extensive experimental results demonstrate that our method significantly outperforms existing state-of-the-art models.

Publication
in IEEE Transactions on Emerging Topics in Computational Intelligence [SCI,JCR Q1]
Yan Xiang
Yan Xiang
Phd student
Xiaochen Yuan
Xiaochen Yuan
Associate Professor
Kaiqi Zhao
Kaiqi Zhao
Phd student
Tong Liu
Tong Liu
Phd student (since 2022.8)
Zhiyao Xie
Zhiyao Xie
Phd student (since 2022.9)