模式识别与人工智能
模式識彆與人工智能
모식식별여인공지능
Moshi Shibie yu Rengong Zhineng
2015年
1期
90-96
,共7页
视觉跟踪%ORB特征%CAMShift跟踪%特征模板
視覺跟蹤%ORB特徵%CAMShift跟蹤%特徵模闆
시각근종%ORB특정%CAMShift근종%특정모판
Visual Tracking%ORB Feature%CAMShift Tracking%Feature Template
为解决CAMShift算法在色彩相似背景下跟踪失效的问题,提出一种结合ORB特征点和目标色彩模型的视觉跟踪算法。运用ORB特征匹配检测目标的初始位置,提出自适应的色彩分割阈值算法以提高目标的色彩模型精度,并在跟踪过程中通过ORB特征点包含信息对搜索窗口进行修正。然后对目标的丢失增加判断方法,并且建立迭代更新的特征模板用于重新定位丢失目标。实验结果证明,与CAMShift算法和基于特征提取的同类改进算法相比,该算法在目标快速运动场景下的跟踪具有较好的鲁棒性,能够对错误的跟踪结果进行判断并修正,并在计算效率上得到较大的提升。
為解決CAMShift算法在色綵相似揹景下跟蹤失效的問題,提齣一種結閤ORB特徵點和目標色綵模型的視覺跟蹤算法。運用ORB特徵匹配檢測目標的初始位置,提齣自適應的色綵分割閾值算法以提高目標的色綵模型精度,併在跟蹤過程中通過ORB特徵點包含信息對搜索窗口進行脩正。然後對目標的丟失增加判斷方法,併且建立迭代更新的特徵模闆用于重新定位丟失目標。實驗結果證明,與CAMShift算法和基于特徵提取的同類改進算法相比,該算法在目標快速運動場景下的跟蹤具有較好的魯棒性,能夠對錯誤的跟蹤結果進行判斷併脩正,併在計算效率上得到較大的提升。
위해결CAMShift산법재색채상사배경하근종실효적문제,제출일충결합ORB특정점화목표색채모형적시각근종산법。운용ORB특정필배검측목표적초시위치,제출자괄응적색채분할역치산법이제고목표적색채모형정도,병재근종과정중통과ORB특정점포함신식대수색창구진행수정。연후대목표적주실증가판단방법,병차건립질대경신적특정모판용우중신정위주실목표。실험결과증명,여CAMShift산법화기우특정제취적동류개진산법상비,해산법재목표쾌속운동장경하적근종구유교호적로봉성,능구대착오적근종결과진행판단병수정,병재계산효솔상득도교대적제승。
To solve the problem of invalid tracking by traditional CAMShift owing to the background with similar colors, a dynamic visual tracking algorithm is proposed combining ORB feature and color model of the object. The ORB feature is applied to extract the initial position of the object, and a adaptive color-threshold segmentation algorithm is proposed to improve the accuracy of color model for the object. Besides, the information of ORB feature points is used to revise the search window in the tracking procedure, which improves the tracking accuracy and robustness. Furthermore, a new method is proposed to estimate whether the moving object is missing, and an iteratively updated feature template is built to relocate the disappeared target. The experiments on video sequence images demonstrate that the proposed algorithm outperforms CAMShift and other improved algorithms based on feature extraction. When the target moves at high speed, the proposed algorithm has good robustness and can find out the wrong tracking result and correct it. Moreover, the computational efficiency rises greatly to ensure the real-time performance.