模式识别与人工智能
模式識彆與人工智能
모식식별여인공지능
Pattern Recognition and Artificial Intelligence
2015年
10期
939-945
,共7页
宋健明%张桦%高赞%张燕%薛彦兵%徐光平
宋健明%張樺%高讚%張燕%薛彥兵%徐光平
송건명%장화%고찬%장연%설언병%서광평
深度数据%稠密时空兴趣点%人体动作描述%轨迹跟踪
深度數據%稠密時空興趣點%人體動作描述%軌跡跟蹤
심도수거%주밀시공흥취점%인체동작묘술%궤적근종
Depth Data%Dense Spatio-Temporal Interest Point%Human Action Description%Trajectory Tracking
目前基于深度数据的动作识别算法得到极大关注,至今仍无一种鲁棒、区分性好的基于深度数据的动作描述算法。针对该问题,文中提出基于深度稠密时空兴趣点的人体动作描述算法。该算法选择多尺度深度稠密特征时空兴趣点,跟踪兴趣点并保存对应轨迹,基于轨迹信息描述动作。通过在 DHA、MSR Action 3D 和 UTKinect 深度动作数据集上评估可知,与一些代表性算法相比,文中算法性能更优。
目前基于深度數據的動作識彆算法得到極大關註,至今仍無一種魯棒、區分性好的基于深度數據的動作描述算法。針對該問題,文中提齣基于深度稠密時空興趣點的人體動作描述算法。該算法選擇多呎度深度稠密特徵時空興趣點,跟蹤興趣點併保存對應軌跡,基于軌跡信息描述動作。通過在 DHA、MSR Action 3D 和 UTKinect 深度動作數據集上評估可知,與一些代錶性算法相比,文中算法性能更優。
목전기우심도수거적동작식별산법득도겁대관주,지금잉무일충로봉、구분성호적기우심도수거적동작묘술산법。침대해문제,문중제출기우심도주밀시공흥취점적인체동작묘술산법。해산법선택다척도심도주밀특정시공흥취점,근종흥취점병보존대응궤적,기우궤적신식묘술동작。통과재 DHA、MSR Action 3D 화 UTKinect 심도동작수거집상평고가지,여일사대표성산법상비,문중산법성능경우。
Much attention is paid to action description algorithm based on depth data now. However, there is no robust, efficient and distinguishing feature representation for depth data. To solve the problem, human action description algorithm based on depth dense spatio-temporal interest point is proposed. Multi-scale depth dense feature spatio-temporal interest points are selected and then tracked, and the trajectories of these points are saved. Finally, the trajectory information is utilized to represent human action. Through the evaluation on DHA, MSR Action 3D and UTKinect depth action dataset, the proposed algorithm show better performance compared with some state-of-the-art algorithms.