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Object Detection with Self-Supervised Scene Adaptation

Zekun Zhang, Minh Hoai

202317 citationsDOI

Abstract

This paper proposes a novel method to improve the performance of a trained object detector on scenes with fixed camera perspectives based on self-supervised adaptation. Given a specific scene, the trained detector is adapted using pseudo-ground truth labels generated by the detector itself and an object tracker in a cross-teaching manner. When the camera perspective is fixed, our method can utilize the background equivariance by proposing artifact-free object mixup as a means of data augmentation, and utilize accurate background extraction as an additional input modality. We also introduce a large-scale and diverse dataset for the development and evaluation of scene-adaptive object detection. Experiments on this dataset show that our method can improve the average precision of the original detector, outperforming the previous state-of-the-art selfsupervised domain adaptive object detection methods by a large margin. Our dataset and code are published at https://github.com/cvlab-stonybrook/scenes100.

Topics & Concepts

Computer scienceArtificial intelligenceComputer visionObject detectionDetectorObject (grammar)Margin (machine learning)Ground truthPerspective (graphical)Artifact (error)Code (set theory)Adaptation (eye)Pattern recognition (psychology)Domain adaptationMachine learningSet (abstract data type)Classifier (UML)OpticsPhysicsTelecommunicationsProgramming languageAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsDomain Adaptation and Few-Shot Learning
Object Detection with Self-Supervised Scene Adaptation | Litcius