Authors
Lei Fan, Mingfu Liang, Yunxuan Li, Gang Hua, Ying Wu
Publication date
2024
Conference
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition
Pages
16351-16361
Description
Active recognition enables robots to intelligently explore novel observations thereby acquiring more information while circumventing undesired viewing conditions. Recent approaches favor learning policies from simulated or collected data wherein appropriate actions are more frequently selected when the recognition is accurate. However most recognition modules are developed under the closed-world assumption which makes them ill-equipped to handle unexpected inputs such as the absence of the target object in the current observation. To address this issue we propose treating active recognition as a sequential evidence-gathering process providing by-step uncertainty quantification and reliable prediction under the evidence combination theory. Additionally the reward function developed in this paper effectively characterizes the merit of actions when operating in open-world environments. To evaluate the performance we collect a dataset from an indoor simulator encompassing various recognition challenges such as distance occlusion levels and visibility. Through a series of experiments on recognition and robustness analysis we demonstrate the necessity of introducing uncertainties to active recognition and the superior performance of the proposed method.
Total citations
Scholar articles
L Fan, M Liang, Y Li, G Hua, Y Wu - Proceedings of the IEEE/CVF Conference on Computer …, 2024