Saved in:
Bibliographic Details
Main Authors: Wang, Taoyi, Wang, Lijian, Lin, Yihan, Ou, Mingtao, Chen, Yuguo, Ji, Xinglong, Zhao, Rong
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.19253
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915262164369408
author Wang, Taoyi
Wang, Lijian
Lin, Yihan
Ou, Mingtao
Chen, Yuguo
Ji, Xinglong
Zhao, Rong
author_facet Wang, Taoyi
Wang, Lijian
Lin, Yihan
Ou, Mingtao
Chen, Yuguo
Ji, Xinglong
Zhao, Rong
contents Perception systems in robotics encounter significant challenges in high-speed and dynamic conditions when relying on traditional cameras, where motion blur can compromise spatial feature integrity and task performance. Brain-inspired vision sensors (BVS) have recently gained attention as an alternative, offering high temporal resolution with reduced bandwidth and power requirements. Here, we present the first quantitative evaluation framework for two representative classes of BVSs in variable-speed robotic sensing, including event-based vision sensors (EVS) that detect asynchronous temporal contrasts, and the primitive-based sensor Tianmouc that employs a complementary mechanism to encode both spatiotemporal changes and intensity. A unified testing protocol is established, including crosssensor calibrations, standardized testing platforms, and quality metrics to address differences in data modality. From an imaging standpoint, we evaluate the effects of sensor non-idealities, such as motion-induced distortion, on the capture of structural information. For functional benchmarking, we examine task performance in corner detection and motion estimation under different rotational speeds. Results indicate that EVS performs well in highspeed, sparse scenarios and in modestly fast, complex scenes, but exhibits performance limitations in high-speed, cluttered settings due to pixel-level bandwidth variations and event rate saturation. In comparison, Tianmouc demonstrates consistent performance across sparse and complex scenarios at various speeds, supported by its global, precise, high-speed spatiotemporal gradient samplings. These findings offer valuable insights into the applicationdependent suitability of BVS technologies and support further advancement in this area.
format Preprint
id arxiv_https___arxiv_org_abs_2504_19253
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Quantitative evaluation of brain-inspired vision sensors in high-speed robotic perception
Wang, Taoyi
Wang, Lijian
Lin, Yihan
Ou, Mingtao
Chen, Yuguo
Ji, Xinglong
Zhao, Rong
Robotics
Computer Vision and Pattern Recognition
Perception systems in robotics encounter significant challenges in high-speed and dynamic conditions when relying on traditional cameras, where motion blur can compromise spatial feature integrity and task performance. Brain-inspired vision sensors (BVS) have recently gained attention as an alternative, offering high temporal resolution with reduced bandwidth and power requirements. Here, we present the first quantitative evaluation framework for two representative classes of BVSs in variable-speed robotic sensing, including event-based vision sensors (EVS) that detect asynchronous temporal contrasts, and the primitive-based sensor Tianmouc that employs a complementary mechanism to encode both spatiotemporal changes and intensity. A unified testing protocol is established, including crosssensor calibrations, standardized testing platforms, and quality metrics to address differences in data modality. From an imaging standpoint, we evaluate the effects of sensor non-idealities, such as motion-induced distortion, on the capture of structural information. For functional benchmarking, we examine task performance in corner detection and motion estimation under different rotational speeds. Results indicate that EVS performs well in highspeed, sparse scenarios and in modestly fast, complex scenes, but exhibits performance limitations in high-speed, cluttered settings due to pixel-level bandwidth variations and event rate saturation. In comparison, Tianmouc demonstrates consistent performance across sparse and complex scenarios at various speeds, supported by its global, precise, high-speed spatiotemporal gradient samplings. These findings offer valuable insights into the applicationdependent suitability of BVS technologies and support further advancement in this area.
title Quantitative evaluation of brain-inspired vision sensors in high-speed robotic perception
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.19253