Author
Listed:
- Zheyu Yang
(Tsinghua University
Lynxi Technologies)
- Taoyi Wang
(Tsinghua University)
- Yihan Lin
(Tsinghua University)
- Yuguo Chen
(Tsinghua University)
- Hui Zeng
(Tsinghua University)
- Jing Pei
(Tsinghua University)
- Jiazheng Wang
(Tsinghua University)
- Xue Liu
(Tsinghua University)
- Yichun Zhou
(Lynxi Technologies)
- Jianqiang Zhang
(Lynxi Technologies)
- Xin Wang
(Lynxi Technologies)
- Xinhao Lv
(Lynxi Technologies)
- Rong Zhao
(Tsinghua University
Tsinghua University)
- Luping Shi
(Tsinghua University
Tsinghua University
Tsinghua University)
Abstract
Image sensors face substantial challenges when dealing with dynamic, diverse and unpredictable scenes in open-world applications. However, the development of image sensors towards high speed, high resolution, large dynamic range and high precision is limited by power and bandwidth. Here we present a complementary sensing paradigm inspired by the human visual system that involves parsing visual information into primitive-based representations and assembling these primitives to form two complementary vision pathways: a cognition-oriented pathway for accurate cognition and an action-oriented pathway for rapid response. To realize this paradigm, a vision chip called Tianmouc is developed, incorporating a hybrid pixel array and a parallel-and-heterogeneous readout architecture. Leveraging the characteristics of the complementary vision pathway, Tianmouc achieves high-speed sensing of up to 10,000 fps, a dynamic range of 130 dB and an advanced figure of merit in terms of spatial resolution, speed and dynamic range. Furthermore, it adaptively reduces bandwidth by 90%. We demonstrate the integration of a Tianmouc chip into an autonomous driving system, showcasing its abilities to enable accurate, fast and robust perception, even in challenging corner cases on open roads. The primitive-based complementary sensing paradigm helps in overcoming fundamental limitations in developing vision systems for diverse open-world applications.
Suggested Citation
Zheyu Yang & Taoyi Wang & Yihan Lin & Yuguo Chen & Hui Zeng & Jing Pei & Jiazheng Wang & Xue Liu & Yichun Zhou & Jianqiang Zhang & Xin Wang & Xinhao Lv & Rong Zhao & Luping Shi, 2024.
"A vision chip with complementary pathways for open-world sensing,"
Nature, Nature, vol. 629(8014), pages 1027-1033, May.
Handle:
RePEc:nat:nature:v:629:y:2024:i:8014:d:10.1038_s41586-024-07358-4
DOI: 10.1038/s41586-024-07358-4
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