Fusing disparate object signatures for salient object detection in video

作者:

Highlights:

• We employ object signatures from complementary channels to help each other in improving salient object detection in respective channels in a video.

• A learning-based method combines various appearance and motion cues is introduced to predict motion boundaries, which are stable for foreground object detection in complex scenes.

• Foreground weights that are computed according to the identified object signatures are used to estimate saliency maps.

• A fusion method, which depends on the saliency information and object signatures, is proposed to integrate saliency maps from different channels to form a higher-quality spatiotemporal saliency maps.

摘要

•We employ object signatures from complementary channels to help each other in improving salient object detection in respective channels in a video.•A learning-based method combines various appearance and motion cues is introduced to predict motion boundaries, which are stable for foreground object detection in complex scenes.•Foreground weights that are computed according to the identified object signatures are used to estimate saliency maps.•A fusion method, which depends on the saliency information and object signatures, is proposed to integrate saliency maps from different channels to form a higher-quality spatiotemporal saliency maps.

论文关键词:Spatiotemporal saliency computation,Salient video object detection,Object signatures,Fusion

论文评审过程:Received 25 March 2017, Revised 30 June 2017, Accepted 26 July 2017, Available online 28 July 2017, Version of Record 4 August 2017.

论文官网地址:https://doi.org/10.1016/j.patcog.2017.07.028