Object tracking on event cameras with offline–online learning
[摘要] Compared with conventional image sensors, event cameras have been attracting attention thanks to their potential in environments under fast motion and high dynamic range (HDR). To tackle the lost-track issue due to fast illumination changes under HDR scene such as tunnels, an object tracking framework has been presented based on event count images from an event camera. The framework contains an offline-trained detector and an online-trained tracker which complement each other: The detector benefits from pre-labelled data during training, but may have false or missing detections; the tracker provides persistent results for each initialised object but may suffer from drifting issues or even failures. Besides, process and measurement equations have been modelled, and a Kalman fusion scheme has been proposed to incorporate measurements from the detector and the tracker. Self-initialisation and track maintenance in the fusion scheme ensure autonomous real-time tracking without user intervene. With self-collected event data in urban driving scenarios, experiments have been conducted to show the performance of the proposed framework and the fusion scheme.
[发布日期] [发布机构]
[效力级别] [学科分类] 数学(综合)
[关键词] object tracking;image sensors;image motion analysis;Kalman filters;video signal processing;object detection;cameras;sensor fusion;learning (artificial intelligence);tracking;event camera;offline–online;conventional image sensors;fast motion;self-collected event data;real-time tracking;fusion scheme;track maintenance;initialised object;detector benefits;online-trained tracker;offline-trained detector;event count images;object tracking framework;HDR scene;fast illumination changes;lost-track issue;high dynamic range [时效性]