Video Polyp Segmentation: A Deep Learning Perspective
In the deep learning era, we present the first comprehensive video polyp segmentation (VPS) study. Over the years, developments in VPS are not moving forward with ease due to the lack of large-scale fine-grained segmentation annotations. To tackle this issue, we first introduce a high-quality per-frame annotated VPS dataset, named SUN-SEG, which includes 158,690 frames from the famous SUN dataset. We provide additional annotations with diverse types, i.e., attribute, object mask, boundary, scribble, and polygon. Second, we design a simple but efficient baseline, dubbed PNS+, consisting of a global encoder, a local encoder, and normalized self-attention (NS) blocks. The global and local encoders receive an anchor frame and multiple successive frames to extract long-term and short-term feature representations, which are then progressively updated by two NS blocks. Extensive experiments show that PNS+ achieves the best performance and real-time inference speed (170fps), making it a promising solution for the VPS task. Third, we extensively evaluate 13 representative polyp/object segmentation models on our SUN-SEG dataset and provide attribute-based comparisons. Benchmark results are available at https: //github.com/GewelsJI/VPS.
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