计算机科学
人工智能
能见度
计算机视觉
试验台
模式识别(心理学)
光学
计算机网络
物理
作者
Jong Ik Kwon,Ji Su Kim,Hyojin Seung,Jihoon Kim,Hanguk Cho,Tae-Min Choi,Jungwon Park,Ju-Youn Park,Jung Ah Lim,Moon Kee Choi,Dae‐Hyeong Kim,Changsoon Choi
出处
期刊:Science Advances
[American Association for the Advancement of Science]
日期:2025-05-02
卷期号:11 (18)
标识
DOI:10.1126/sciadv.adt6527
摘要
Robotic vision has traditionally relied on high-performance yet resource-intensive computing solutions, which necessitate high-throughput data transmission from vision sensors to remote computing servers, sacrificing energy efficiency and processing speed. A promising solution is data compaction through contour extraction, visualizing only the outlines of objects while eliminating superfluous backgrounds. Here, we introduce an in-sensor multilevel image adjustment method using adjustable synaptic phototransistors, enabling the capture of well-defined images with optimal brightness and contrast suitable for achieving high-clarity contour extraction. This is enabled by emulating dopamine-mediated neuronal excitability regulation mechanisms. Electrostatic gating effect either facilitates or inhibits time-dependent photocurrent accumulation, adjusting photo-responses to varying lighting conditions. Through excitatory and inhibitory modes, the adjustable synaptic phototransistor enhances visibility of dim and bright regions, respectively, facilitating distinct contour extraction and high-accuracy semantic segmentation. Evaluations using road images demonstrate improvement of both object detection accuracy and intersection over union, and compression of data volume.
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