M-SEVIQ: A Multi-band Stereo Event Visual-Inertial Quadruped-based Dataset for Perception under Rapid Motion and Challenging Illumination
By: Jingcheng Cao , Chaoran Xiong , Jianmin Song and more
Potential Business Impact:
Helps robots see better when moving fast.
Agile locomotion in legged robots poses significant challenges for visual perception. Traditional frame-based cameras often fail in these scenarios for producing blurred images, particularly under low-light conditions. In contrast, event cameras capture changes in brightness asynchronously, offering low latency, high temporal resolution, and high dynamic range. These advantages make them suitable for robust perception during rapid motion and under challenging illumination. However, existing event camera datasets exhibit limitations in stereo configurations and multi-band sensing domains under various illumination conditions. To address this gap, we present M-SEVIQ, a multi-band stereo event visual and inertial quadruped dataset collected using a Unitree Go2 equipped with stereo event cameras, a frame-based camera, an inertial measurement unit (IMU), and joint encoders. This dataset contains more than 30 real-world sequences captured across different velocity levels, illumination wavelengths, and lighting conditions. In addition, comprehensive calibration data, including intrinsic, extrinsic, and temporal alignments, are provided to facilitate accurate sensor fusion and benchmarking. Our M-SEVIQ can be used to support research in agile robot perception, sensor fusion, semantic segmentation and multi-modal vision in challenging environments.
Similar Papers
SEBVS: Synthetic Event-based Visual Servoing for Robot Navigation and Manipulation
Robotics
Lets robots see and move better in tough spots.
Event Spectroscopy: Event-based Multispectral and Depth Sensing using Structured Light
CV and Pattern Recognition
Drones see better in forests, even in the dark.
Exploring The Missing Semantics In Event Modality
CV and Pattern Recognition
Helps cameras see objects even in fast motion.