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題名:舉重槓鈴軌跡即時技術分析建構與研究
書刊名:體育學報
作者:徐敬亭 引用關係何維華 引用關係蔡溫義林穎真
作者(外文):Hsu, Ching-tingHo, Wei-huaTsai, Wen-iLin, Ying-chen
出版日期:2018
卷期:51:1
頁次:頁73-84
主題關鍵詞:抓舉挺舉視訊軌跡技術分析SnatchClean & jerkVideo object trajectorySport performance analysis
原始連結:連回原系統網址new window
相關次數:
  • 被引用次數被引用次數:期刊(1) 博士論文(0) 專書(0) 專書論文(0)
  • 排除自我引用排除自我引用:1
  • 共同引用共同引用:28
  • 點閱點閱:203
緒論:以往的舉重運動學分析常常需要使用到反光點及實驗室環境,不但成本高昂且無法即時呈現結果,本文將利用舉重運動及槓鈴軌跡移動之特性,設計視訊物件追蹤演算法,並以此演算法開發計算機輔助舉重訓練系統,自動為舉重影片繪製槓鈴軌跡,希望能達成即時回饋給教練並應用在比賽及訓練當中。方法:攝影機拍攝視訊的過程當中,同時擷取了被拍攝物件的時空域資訊。在本研究當中,我們利用空間域及時間域資訊提出一槓鈴自動追蹤演算法,自動化找尋槓鈴在畫面當中的座標,以此座標繪製槓鈴運動軌跡。除演算法之外,本文當中更利用此演算法實現計算機輔助舉重訓練系統,並利用此系統繪製軌跡,透過此軌跡,進一步分析選手的運動表現。結果:我們利用102學年度大專盃舉重賽為分析對象,視訊影像採用消費級數位相機或消費級數位攝影機於場邊攝影,從分析過程中發現自行開發的輔助訓練系統節省了93%的分析時間,並且,本系統產生之軌跡與市售運動學分析軟體所產生之軌跡一致,足以分析舉重不同階段之軌跡。結論:利用輔助訓練系統,我們可以透過槓鈴軌跡觀察選手的試舉過程是否有需要改進的地方或是可能因疲勞而導致受傷,本系統有低系統複雜性的特性,讓教練及選手在使用系統時能更簡單的使用。
Introduction: A realtime weightlifting automatic barbell trajectory extraction algorithm was proposed in this paper. We utilize the color and motion characteristics of the barbell to extract from the video sequence and further implement a computer-aided weightlifting training system by considering the barbell trajectory. Our aim was to create a new computer-aided training system which can utilize in a real competition and feedback analysis result to the coach in realtime. This system can effectively decrease the cost of the kinematic analysis which needs manual marker and lab environmental. Methods: Spatial and temporal of the video sequence are both considering to find the coordinate of barbell in a frame and further connect the coordinates as the trajectory. The trajectory of the barbell was utilized in our computer-aided training system and evaluated the performance of the lifter. Results: 2013 Taiwan Weightlifting Universidad Game was utilized to verify our proposed algorithm. The video sequence was captured by consumer camcorders, the trajectory of barbell was then be extracted from these videos. Compare to traditional kinematic software, our proposed barbell trajectory extraction algorithm can effectively reduce the operation time more than 93% and gather the same trajectory as the traditional kinematic software. Conclusions: By observation the weightlifting barbell trajectory, we can evaluate the performance of the lifter. Our proposed algorithm effectively reduce the computational complexity. Automatically and effectively extracting the trajectory makes computer-aided weightlifting training system easily operated.
期刊論文
1.湯文慈、鴻宗穎、陳柏揚(20091200)。優秀大專舉重選手抓舉發力期之上肢動作分析。體育學報,42(4),13-28。new window  延伸查詢new window
2.許加、王信淵(20060300)。震動訓練對肌力和爆發力的效果。中華體育季刊,20(1)=76,40-47。new window  延伸查詢new window
3.莊銘修、張立羣(20140400)。世界大學抓舉冠軍選手之槓鈴運動學分析。華人運動生物力學期刊,10,1-9。new window  延伸查詢new window
4.陳瑞蓮、陳淑枝、黃達德(20100400)。大專女子舉重選手抓舉與挺舉提鈴期之動力學分析。華人運動生物力學期刊,2(1),64-69。new window  延伸查詢new window
5.Storey, Adam、Smith, Heather K.(2012)。Unique aspects of competitive weightlifting: Performance, training and physiology。Sports Medicine,42(9),769-790。  new window
6.林建志、李育銘、李恆儒(20150300)。前十字韌帶重建後運動員從事躍起著地動作時下肢關節運動與肌肉活化特徵。體育學報,48(1),45-58。new window  延伸查詢new window
7.謝耀毅、陳柏潔、黃長福(20150600)。不同性別排球選手扣球著地下肢生物力學之差異。體育學報,48(2),195-203。new window  延伸查詢new window
8.李建勳、戴至禾、戴國輝、陳羿揚、涂瑞洪(20130900)。優秀蹼泳選手出發動作之生物力學分析。體育學報,46(3),221-230。new window  延伸查詢new window
9.邱宏達、梁日蕾、吳再富(2010)。青年女子舉重運動員抓舉槓鈴運動特性之分析。華人運動生物力學期刊,1,23-31。  延伸查詢new window
10.相子元(2009)。追求卓越的運動表現。華人運動生物力學期刊,1,52-55。  延伸查詢new window
11.Chu, W. C.、Hsu, C. T.、Ho, W. H.、Tsai, R. S.、Jhu, J. A.(2015)。Performance evaluation of basketball point guard in real competitions by utilizing proposed computer-aided sport training system。Lecure notes in management science,45(1),181-187。  new window
12.Harbili, E.(2012)。A gender-based kinematic and kinetic analysis of thesnatch lift in elite weightliftersin 69-kg category。Journal of Sports Science and Medicine,11,162-169。  new window
13.Isaka, T.、Okada, T.、Fuanto, K.(1996)。Kinematic analysis of the barbell during the snatch movement in elite Asian weightlifters。Journal of Applied Biomechanics,12,508-516。  new window
14.Lin, Y. C.、Hsu, C. T.、Ho, W. H.(2015)。Performance evaluation for weightlifting lifter by barbell trajectory。International journal of medical, health, biomedical, bioengineering and pharmaceutical engineering,9(2),193-196。  new window
15.Sato, K.、Sands, W. A.、Stone, M. H.(2012)。The reliability of accelerometer to measure weightlifting performance。Sport Biomechanics,11(4),524-531。  new window
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會議論文
1.Jocic, M.、Oradovic, D.、Kojovic, Z.、Tertei, D.(2013)。OpenGL implementation of a color based object tracking。The 3rd International Conference on Information Society Technology。Toronto。  new window
2.Lenjannejadian, S.、Rostami, M.(2008)。Optimal trajectories of snatch weightlifting for two different weight classes by using genetic algorithm。2008 Cairo international conference on biomedical engineering。Cairo。  new window
3.Rahmati, S. M. A.、Mallakzadeh, M.(2011)。Determination of optimum objective function for evaluation optimal body and barbell trajectories of snatch weightlifting via generic algorithm optimization。18th Iranian conference on biomedical engineering。Tehran。  new window
4.Ren, Y.、Fan, B.、Lin, W.、Yang, X.、Li, H.、Li, W.、Liu, D.(2011)。An efficient framework for analyzing periodical activities in sports videos。4th international conference on image and signal processing。Shanghi。  new window
5.Zhang, T.、Ghanem, B.、Ahuja, N.(2012)。Robust multi-object tracking via cross-domain contextual information for sports video analysis。IEEE international conference on acoustics, speech and signal processing。Kyoto。  new window
6.Zivkovic, A.、Krose, B.(2004)。An em-like algorithm for color-histogram-based object tracking。2004 IEEE computer society conference on computer vision and pattern recognition。Washington, D.C.。  new window
 
 
 
 
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