Environment Feature
Environment feature research focuses on understanding and leveraging environmental context to improve the performance and robustness of various systems, particularly in artificial intelligence and robotics. Current research emphasizes developing methods to represent and utilize environmental information, including factored state representations in reinforcement learning, textual descriptions for noise-robustness in speech processing, and adaptive algorithms that adjust to dynamic changes. This work is significant because it addresses critical limitations in AI systems, such as sample inefficiency, vulnerability to noise and distractions, and poor generalization across different settings, ultimately leading to more reliable and adaptable technologies.
Papers
Spot the Difference: A Novel Task for Embodied Agents in Changing Environments
Federico Landi, Roberto Bigazzi, Marcella Cornia, Silvia Cascianelli, Lorenzo Baraldi, Rita Cucchiara
Multiple-environment Self-adaptive Network for Aerial-view Geo-localization
Tingyu Wang, Zhedong Zheng, Yaoqi Sun, Chenggang Yan, Yi Yang, Tat-Seng Chua