Multi-modal pedestrian detection on the move

Autor: Zsolt Kira, Sujit Kuthirummal, Ben Southall, Jayan Eledath, Raia Hadsell, Bogdan Matei
Rok vydání: 2012
Předmět:
Zdroj: TePRA
DOI: 10.1109/tepra.2012.6215671
Popis: This paper presents an on-the-move pedestrian detection system that utilizes multiple sensor modalities to improve detection rates at deployable computational loads. The system was developed for a vehicle moving up to 40 kph that can detect moving pedestrians up to a distance of 50m, with support for both day and night operations. In the day, 3D pointclouds obtained from an 8-layer LIDAR sensor are processed to produce a labeling of the scene distinguishing ground, large structures, and potential pedestrians to produce reliable detections in the short range (up to 30m), while a stereo-based detection and classification system is used for ranges between 30–50m+. We describe the algorithms in detail and show that the combined system allows for reliable detection at faster frame-rates than when using each sensor or component individually. A second method for fusing two IR cameras with the LIDAR sensor is proposed for night operations, where LIDAR is used to produce multi-scale masks that define the search space for a HOG-based pedestrian classifier.
Databáze: OpenAIRE