电子学报
電子學報
전자학보
ACTA ELECTRONICA SINICA
2014年
5期
875-882
,共8页
对象跟踪%多重检测%在线学习%随机蕨
對象跟蹤%多重檢測%在線學習%隨機蕨
대상근종%다중검측%재선학습%수궤궐
object tracking%multiple detectors%online learning%random ferns
为了研究无约束环境下长时间可视跟踪问题,提出了一种在线学习多重检测的对象跟踪方法。该方法以随机蕨作为基础检测器结构,通过在线学习的方式,将目标对象的整体和局部表观,以及由场景学习中发掘的同步对象同时作为检测学习的基础数据,该检测器因而具备了对这多种对象的独立检测能力。由于其各个检测部分发挥了各自不同的作用,本文从测量的角度将检测器对这三种对象检测的结果进行融合,通过计算检测关于目标的配置概率进而确定目标位置,实现对象跟踪任务。基于真实视频序列的实验结果验证了本文方法的有效性和稳定性,以及较现有的跟踪方法在跟踪性能上的提高。
為瞭研究無約束環境下長時間可視跟蹤問題,提齣瞭一種在線學習多重檢測的對象跟蹤方法。該方法以隨機蕨作為基礎檢測器結構,通過在線學習的方式,將目標對象的整體和跼部錶觀,以及由場景學習中髮掘的同步對象同時作為檢測學習的基礎數據,該檢測器因而具備瞭對這多種對象的獨立檢測能力。由于其各箇檢測部分髮揮瞭各自不同的作用,本文從測量的角度將檢測器對這三種對象檢測的結果進行融閤,通過計算檢測關于目標的配置概率進而確定目標位置,實現對象跟蹤任務。基于真實視頻序列的實驗結果驗證瞭本文方法的有效性和穩定性,以及較現有的跟蹤方法在跟蹤性能上的提高。
위료연구무약속배경하장시간가시근종문제,제출료일충재선학습다중검측적대상근종방법。해방법이수궤궐작위기출검측기결구,통과재선학습적방식,장목표대상적정체화국부표관,이급유장경학습중발굴적동보대상동시작위검측학습적기출수거,해검측기인이구비료대저다충대상적독립검측능력。유우기각개검측부분발휘료각자불동적작용,본문종측량적각도장검측기대저삼충대상검측적결과진행융합,통과계산검측관우목표적배치개솔진이학정목표위치,실현대상근종임무。기우진실시빈서렬적실험결과험증료본문방법적유효성화은정성,이급교현유적근종방법재근종성능상적제고。
In order to study the problem of long-term visual tracking in unconstrained environments ,this paper proposes a method of learning multiple detectors online for visual object tracking .The method uses the random ferns as the basic detector .The entire and the local appearances of the target and the connected objects which are explored by the context learning are used syn-chronously as the training data to build and upgrade the object detector on the fly .Thus it is able to detect the objects with different classes independently .Since different detections are related to different object classes ,the results of object detections are fused as the measurements and the probabilities of configuration hypotheses for the measurements to the target are calculated to find the target lo-cation for visual tracking task .Experimental results based on the real-world video sequences validate the effectiveness and robustness of our approach and demonstrate its better tracking performance than several state-of-the-art methods .