arXiv (Cornell University)
AISFormer: Amodal Instance Segmentation with Transformer
October 2022 • Minh Trần, Khoa Vo, Kashu Yamazaki, Arthur Gustavo Fernandes, Michael Kidd, Ngan Le
Amodal Instance Segmentation (AIS) aims to segment the region of both visible and possible occluded parts of an object instance. While Mask R-CNN-based AIS approaches have shown promising results, they are unable to model high-level features coherence due to the limited receptive field. The most recent transformer-based models show impressive performance on vision tasks, even better than Convolution Neural Networks (CNN). In this work, we present AISFormer, an AIS framework, with a Transformer-based mask head. AIS…