BASNet: Boundary-Aware Salient Object Detection
Figure 2. Architecture of our proposed boundary-aware salient object detection network: BASNet. et al. (R3Net+) [6] developed a recurrent residual refine-ment network for saliency maps refinement by incorporat-ing shallow and deep layers’ features alternately. Wang et al. (DGRL) [65] proposed to localize salient objects glob-
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