首页 /研究 /RGB-D Saliency Detection: Dataset and Algorithm for Robot Vision
PERCEPTION

RGB-D Saliency Detection: Dataset and Algorithm for Robot Vision

Xia Yuan, Yue Juan, Yanan Zhang

发表年份
2018
引用次数
9

摘要

Saliency detection is an active research field in computer vision in recent years. As RGB-D sensors are more and more widely used in a robot system, the demand of corresponding saliency detection datasets and algorithms are growing rapidly. In this paper, we built a RGB-D saliency detection dataset NJUSTDS1000 contains 1000 real RGB-D scenes. The labeling of saliency ground truth of this dataset is based on color and depth fixation map. Then we propose a spectral and spatial analysis based RGB-D saliency detection model. It uses quaternion to present multi-channel features and dose fast saliency detection based on spectral analysis. Then a two-steps scale adaptive saliency fusion process is carried out in spatial domain, which are scale adaptive superpixel based saliency smoothing and multi-layer cellular automata based saliency maps fusion. We validate the proposed model on NJUSTDS 1000 and MSRA10K.

关键词

RGB color modelArtificial intelligenceComputer scienceComputer visionKadir–Brady saliency detectorPattern recognition (psychology)SmoothingRobotObject detection

相关论文

查看 PERCEPTION 分类全部论文