BASNet: Boundary-Aware Salient Object Detection
[20] and salient object detection [3]. Our work focuses on the second branch and aims at accurately segmenting the pixels of salient objects in an input image. The results have immediate applications in e.g. image segmentation/editing [53, 25, 11, 54] and manipulation [24, 43], visual tracking [32, 52, 55] and user interface optimization [12].
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