Back to Search Start Over

Domain-Specific Suppression for Adaptive Object Detection

Authors :
Wang, Yu
Zhang, Rui
Zhang, Shuo
Li, Miao
Xia, YangYang
Zhang, XiShan
Liu, ShaoLi
Publication Year :
2021

Abstract

Domain adaptation methods face performance degradation in object detection, as the complexity of tasks require more about the transferability of the model. We propose a new perspective on how CNN models gain the transferability, viewing the weights of a model as a series of motion patterns. The directions of weights, and the gradients, can be divided into domain-specific and domain-invariant parts, and the goal of domain adaptation is to concentrate on the domain-invariant direction while eliminating the disturbance from domain-specific one. Current UDA object detection methods view the two directions as a whole while optimizing, which will cause domain-invariant direction mismatch even if the output features are perfectly aligned. In this paper, we propose the domain-specific suppression, an exemplary and generalizable constraint to the original convolution gradients in backpropagation to detach the two parts of directions and suppress the domain-specific one. We further validate our theoretical analysis and methods on several domain adaptive object detection tasks, including weather, camera configuration, and synthetic to real-world adaptation. Our experiment results show significant advance over the state-of-the-art methods in the UDA object detection field, performing a promotion of $10.2\sim12.2\%$ mAP on all these domain adaptation scenarios.<br />Comment: Accepted in CVPR 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2105.03570
Document Type :
Working Paper