Litcius/Paper detail

RGBD Salient Object Detection via Disentangled Cross-Modal Fusion

Hao Chen, Yongjian Deng, Youfu Li, Tzu-Yi Hung, Guosheng Lin

2020IEEE Transactions on Image Processing97 citationsDOI

Abstract

Depth is beneficial for salient object detection (SOD) for its additional saliency cues. Existing RGBD SOD methods focus on tailoring complicated cross-modal fusion topologies, which although achieve encouraging performance, are with a high risk of over-fitting and ambiguous in studying cross-modal complementarity. Different from these conventional approaches combining cross-modal features entirely without differentiating, we concentrate our attention on decoupling the diverse cross-modal complements to simplify the fusion process and enhance the fusion sufficiency. We argue that if cross-modal heterogeneous representations can be disentangled explicitly, the cross-modal fusion process can hold less uncertainty, while enjoying better adaptability. To this end, we design a disentangled cross-modal fusion network to expose structural and content representations from both modalities by cross-modal reconstruction. For different scenes, the disentangled representations allow the fusion module to easily identify, and incorporate desired complements for informative multi-modal fusion. Extensive experiments show the effectiveness of our designs and a large outperformance over state-of-the-art methods.

Topics & Concepts

ModalComputer scienceArtificial intelligenceComputer visionFusionObject detectionSalientObject (grammar)Sensor fusionPattern recognition (psychology)LinguisticsChemistryPolymer chemistryPhilosophyVisual Attention and Saliency DetectionAdvanced Image Fusion TechniquesInfrared Target Detection Methodologies
RGBD Salient Object Detection via Disentangled Cross-Modal Fusion | Litcius