计算机工程与应用
計算機工程與應用
계산궤공정여응용
COMPUTER ENGINEERING AND APPLICATIONS
2014年
18期
178-181
,共4页
目标跟踪%粒子滤波%多特征融合%粒子集自适应调整
目標跟蹤%粒子濾波%多特徵融閤%粒子集自適應調整
목표근종%입자려파%다특정융합%입자집자괄응조정
object tracking%particle filter%multi-features fusion%particle-set being adjusted adaptively
为提高粒子滤波视觉目标跟踪算法的实时性与鲁棒性,提出了一种基于多特征融合的自适应性粒子滤波跟踪算法。该算法利用颜色和结构特征表示目标,将两者融合于粒子滤波的框架中,利用融合后的信息计算粒子的权值,以降低算法受目标形变及复杂环境的影响。同时,根据跟踪预测的准确程度动态计算跟踪所需的粒子数目,对采样粒子集进行自适应调整,以提高粒子质量,降低粒子数量,减少算法运算时间。实验结果表明,所提算法对于每帧图像的平均计算时间相对于传统混合跟踪算法缩短了将近一半,而且算法的鲁棒性较强。
為提高粒子濾波視覺目標跟蹤算法的實時性與魯棒性,提齣瞭一種基于多特徵融閤的自適應性粒子濾波跟蹤算法。該算法利用顏色和結構特徵錶示目標,將兩者融閤于粒子濾波的框架中,利用融閤後的信息計算粒子的權值,以降低算法受目標形變及複雜環境的影響。同時,根據跟蹤預測的準確程度動態計算跟蹤所需的粒子數目,對採樣粒子集進行自適應調整,以提高粒子質量,降低粒子數量,減少算法運算時間。實驗結果錶明,所提算法對于每幀圖像的平均計算時間相對于傳統混閤跟蹤算法縮短瞭將近一半,而且算法的魯棒性較彊。
위제고입자려파시각목표근종산법적실시성여로봉성,제출료일충기우다특정융합적자괄응성입자려파근종산법。해산법이용안색화결구특정표시목표,장량자융합우입자려파적광가중,이용융합후적신식계산입자적권치,이강저산법수목표형변급복잡배경적영향。동시,근거근종예측적준학정도동태계산근종소수적입자수목,대채양입자집진행자괄응조정,이제고입자질량,강저입자수량,감소산법운산시간。실험결과표명,소제산법대우매정도상적평균계산시간상대우전통혼합근종산법축단료장근일반,이차산법적로봉성교강。
To improve the real-time and robustness performance of particles filter algorithm for tracking vision objects, an adaptive particle filter tracking method based on multi-feature fusion is proposed. The proposed method uses the color and structural features to present the interested target. These features are integrated in the frame of particle filter, and the weights of particles are calculated by this integration, in order to conquer the distractions from the target deformation and the complex background. Meanwhile, particle number is calculated dynamically according to the tracking accuracy, and the particle-set is also adjusted adaptively, in order to promote the quality of particle and reduce its quantity, and then the cost of calculation is reduced. The experimental results show that the average of each frame’s operation time of the pro-posed method is nearly half of classic hybrid algorithm, and the proposed method is of higher robustness.