Conditional Convolutions for Instance Segmentation
Zhi Tian, Chunhua Shen, Hao Chen
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- github.com/aim-uofa/AdelaiDetOfficialpytorch★ 3,474
- github.com/zymk9/Yet-Another-Anime-Segmenternone★ 197
- github.com/blueardour/AdelaiDetpytorch★ 5
- github.com/Pxtri2156/AdelaiDet_v2pytorch★ 5
- github.com/quangvy2703/ABCNet-ESRGAN-SRTEXTpytorch★ 4
- github.com/zhaozhijie1997/Unifed-Lane-and-Traffic-Sign-detectionpytorch★ 4
- github.com/zhubinQAQ/Inspytorch★ 2
Abstract
We propose a simple yet effective instance segmentation framework, termed CondInst (conditional convolutions for instance segmentation). Top-performing instance segmentation methods such as Mask R-CNN rely on ROI operations (typically ROIPool or ROIAlign) to obtain the final instance masks. In contrast, we propose to solve instance segmentation from a new perspective. Instead of using instance-wise ROIs as inputs to a network of fixed weights, we employ dynamic instance-aware networks, conditioned on instances. CondInst enjoys two advantages: 1) Instance segmentation is solved by a fully convolutional network, eliminating the need for ROI cropping and feature alignment. 2) Due to the much improved capacity of dynamically-generated conditional convolutions, the mask head can be very compact (e.g., 3 conv. layers, each having only 8 channels), leading to significantly faster inference. We demonstrate a simpler instance segmentation method that can achieve improved performance in both accuracy and inference speed. On the COCO dataset, we outperform a few recent methods including well-tuned Mask RCNN baselines, without longer training schedules needed. Code is available: https://github.com/aim-uofa/adet