Litcius/Paper detail

Modality-Induced Transfer-Fusion Network for RGB-D and RGB-T Salient Object Detection

Gang Chen, Feng Shao, Xiongli Chai, Hangwei Chen, Qiuping Jiang, Xiangchao Meng, Yo‐Sung Ho

2022IEEE Transactions on Circuits and Systems for Video Technology90 citationsDOI

Abstract

The ability of capturing the complementary information of multi-modality data is critical to the development of multi-modality salient object detection (SOD). Most of existing studies attempt to integrate multi-modality information through various fusion strategies. However, most of these methods ignore the inherent differences in multi-modality data, resulting in poor performance when dealing with some challenging scenarios. In this paper, we propose a novel Modality-Induced Transfer-Fusion Network (MITF-Net) for RGB-D and RGB-T SOD by fully exploring the complementarity in multi-modality data. Specifically, we first deploy a modality transfer fusion (MTF) module to bridge the semantic gap between single and multi-modality data, and then mine the cross-modality complementarity based on point-to-point structural similarity information. Then, we design a cycle-separated attention (CSA) module to optimize the cross-layer information recurrently, and measure the effectiveness of cross-layer features through point-wise convolution-based multi-scale channel attention. Furthermore, we refine the boundaries in the decoding stage to obtain high-quality saliency maps with sharp boundaries. Extensive experiments on 13 RGB-D and RGB-T SOD datasets show that the proposed MITF-Net achieves a competitive and excellent performance.

Topics & Concepts

RGB color modelModality (human–computer interaction)Computer scienceArtificial intelligenceComplementarity (molecular biology)Sensor fusionDecoding methodsPattern recognition (psychology)Computer visionAlgorithmBiologyGeneticsVisual Attention and Saliency DetectionAdvanced Image and Video Retrieval TechniquesAdvanced Neural Network Applications