How to Reduce Change Detection to Semantic Segmentation

15 Jun 2022  ยท  Guo-Hua Wang, Bin-Bin Gao, Chengjie Wang ยท

Change detection (CD) aims to identify changes that occur in an image pair taken different times. Prior methods devise specific networks from scratch to predict change masks in pixel-level, and struggle with general segmentation problems. In this paper, we propose a new paradigm that reduces CD to semantic segmentation which means tailoring an existing and powerful semantic segmentation network to solve CD. This new paradigm conveniently enjoys the mainstream semantic segmentation techniques to deal with general segmentation problems in CD. Hence we can concentrate on studying how to detect changes. We propose a novel and importance insight that different change types exist in CD and they should be learned separately. Based on it, we devise a module named MTF to extract the change information and fuse temporal features. MTF enjoys high interpretability and reveals the essential characteristic of CD. And most segmentation networks can be adapted to solve the CD problems with our MTF module. Finally, we propose C-3PO, a network to detect changes at pixel-level. C-3PO achieves state-of-the-art performance without bells and whistles. It is simple but effective and can be considered as a new baseline in this field. Our code is at https://github.com/DoctorKey/C-3PO.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Change Detection ChangeSim C-3PO Category mIoU 27.8 # 1
Scene Change Detection ChangeSim C-3PO Category mIoU 27.8 # 1
Change Detection PCD C-3PO F1 score 0.83 # 1
Scene Change Detection PCD C-3PO (ResNet-18) F1-score 0.824 # 2
Scene Change Detection PCD C-3PO (VGG-16) F1-score 0.830 # 1
Scene Change Detection VL-CMU-CD C-3PO (ResNet-18) F1-score 0.794 # 2
Scene Change Detection VL-CMU-CD C-3PO (VGG-16) F1-score 0.800 # 1

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