Active sensing research refers to the process where sensors or organisms actively gather information by interacting with their environment, distinguishing it from passive sensing, which relies on receiving signals without intervention. This field encompasses research on active sensing in humans, robotics, and computing systems, focusing on how information acquisition is optimized for perception and decision-making. As a key area within computer vision and multimedia computation, active sensing advances technologies that enhance sensory systems and autonomous behavior. JoVE Visualize pairs PubMed articles with JoVE’s experiment videos, offering a richer understanding of experimental methods and findings in this evolving domain.
Core techniques in active sensing include sensor modulation, adaptive sampling, and feedback-driven data acquisition, widely applied in domains like robotics and neuroscience. Research often contrasts active sensing vs passive sensing to understand the benefits of dynamic data collection, especially in human sensory systems and computational models. Methods such as active remote sensing utilize controlled signal emission and reception, improving spatial resolution and data quality. Experimentation often involves integrating multimodal sensors to replicate biological active sensory systems, enhancing object detection and environmental mapping capabilities.
Recent advances in active sensing explore the integration of machine learning to optimize sensor behavior in real-time, enabling more efficient data processing and autonomous decision-making. Innovations in robotics emphasize tactile and proprioceptive active sensing examples, improving interaction with complex environments. Additionally, neuro-inspired active sensing psychology models offer insights into attention mechanisms and perception strategies, influencing artificial sensory system design. Novel hardware developments and algorithmic strategies are being combined to enhance active remote sensing platforms and multimodal sensor fusion, driving the evolution of intelligent sensing technologies.
Jesus E Juarez Casillas, Luca F Valle, Jonathan Pham, Dylan O'Connell, X Sharon Qi, James M Lamb, Melissa Ghafarian, Michael L Steinberg, Minsong Cao, Amar U Kishan
Yefei Wang, Songnian Tan, Ping Jia, Daojing Li, Yuan Yao, Honghai Shen, Yongsen Xu
Xue Wang, Jian Yu, Yanmeng Dai, Dikai Li, Runxiang Xia, Qian Chen, Leifeng Cao, Cangtao Zhou, Shuangchen Ruan
Emanuele Simioni, Claudio Pernechele, Wolfgang Erb, Andrea Marchini, Paolo Martini, Luigi Lessio, Luca Penasa, Monica Beghini
Hongwei Zhao, Wenhao Ma, Peirui Ji, Guofeng Zhang, Baoquan Shi, Zonghua Zhang, Wei Yin, Shuming Yang
Junfu Yang, Zhijiang Xie, Hao Ni, Xiaoling Chen, Zhongli Qin, Dong Zhao, Miaomiao Zhao
Rajveer Kaur, Bhargab Das, Jae-Hyeung Park, Raj Kumar
Yong-Wei Lai, Li-Sheng Hu, Cheng-Yi Tsai, Tien-Chiu Chen, Wen-Hsuan Hsieh, Tien-Chang Lu, Chia-Yen Huang