Distance Estimation in Outdoor Driving Environments Using Phase-only Correlation Method with Event Cameras
Masataka Kobayashi (1), Shintaro Shiba (2), Quan Kong (2), Norimasa Kobori (2), Tsukasa Shimizu (3), Shan Lu (1), Takaya Yamazato (1) ((1) School of Engineering, Nagoya University, Nagoya, Japan, (2) Woven by Toyota, Inc., Tokyo, Japan, (3) Toyota Motor Corporation, Toyota

TL;DR
This paper introduces a novel distance estimation method for outdoor driving using a monocular event camera and phase-only correlation, achieving high accuracy and success rates without stereo vision.
Contribution
The study presents a new approach combining event cameras and phase-only correlation for precise distance measurement in outdoor driving environments.
Findings
Over 90% success rate in outdoor distance estimation
Less than 0.5-meter error for 20-60 meters range
Effective in challenging lighting conditions
Abstract
With the growing adoption of autonomous driving, the advancement of sensor technology is crucial for ensuring safety and reliable operation. Sensor fusion techniques that combine multiple sensors such as LiDAR, radar, and cameras have proven effective, but the integration of multiple devices increases both hardware complexity and cost. Therefore, developing a single sensor capable of performing multiple roles is highly desirable for cost-efficient and scalable autonomous driving systems. Event cameras have emerged as a promising solution due to their unique characteristics, including high dynamic range, low latency, and high temporal resolution. These features enable them to perform well in challenging lighting conditions, such as low-light or backlit environments. Moreover, their ability to detect fine-grained motion events makes them suitable for applications like pedestrian…
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