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BiMaL: Bijective Maximum Likelihood Approach to Domain Adaptation in Semantic Scene Segmentation

About

Semantic segmentation aims to predict pixel-level labels. It has become a popular task in various computer vision applications. While fully supervised segmentation methods have achieved high accuracy on large-scale vision datasets, they are unable to generalize on a new test environment or a new domain well. In this work, we first introduce a new Un-aligned Domain Score to measure the efficiency of a learned model on a new target domain in unsupervised manner. Then, we present the new Bijective Maximum Likelihood(BiMaL) loss that is a generalized form of the Adversarial Entropy Minimization without any assumption about pixel independence. We have evaluated the proposed BiMaL on two domains. The proposed BiMaL approach consistently outperforms the SOTA methods on empirical experiments on "SYNTHIA to Cityscapes", "GTA5 to Cityscapes", and "SYNTHIA to Vistas".

Thanh-Dat Truong, Chi Nhan Duong, Ngan Le, Son Lam Phung, Chase Rainwater, Khoa Luu• 2021

Related benchmarks

TaskDatasetResultRank
Semantic segmentationGTA5 → Cityscapes (val)
mIoU47.3
533
Semantic segmentationSYNTHIA to Cityscapes (val)
Rider IoU22.3
435
Semantic segmentationSYNTHIA to Cityscapes
Road IoU92.8
150
Semantic segmentationSynthia to Cityscapes (test)
Road IoU92.8
138
Semantic segmentationCityscapes (val)
mIoU47.3
133
Semantic segmentationGTA5 to Cityscapes 1.0 (val)
Road IoU91.2
98
Semantic segmentationCityscapes trained on SYNTHIA (val)
Road IoU92.8
60
Semantic segmentationGTA5 to Cityscapes
mIoU47.3
58
Semantic segmentationCityscapes GTA5 to Cityscapes adaptation
mIoU47.3
12
Semantic segmentationBDD to UAVID (test)
Road19.5
9
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