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Indian Classical Dance Classification with Adaboost Multiclass Classifier on Multifeature Fusion

机译:用adaboost多标配分类器在多聚模具融合中的印度古典舞蹈分类

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摘要

Extracting and recognizing complex human movements from unconstraint online video sequence is an interesting task. In this paper the complicated problem from the class is approached using unconstraint video sequences belonging to Indian classical dance forms. A new segmentation model is developed using discrete wavelet transform and local binary pattern (LBP) features for segmentation. A 2D point cloud is created from the local human shape changes in subsequent video frames. The classifier is fed with 5 types of features calculated from Zernike moments, Hu moments, shape signature, LBP features, and Haar features. We also explore multiple feature fusion models with early fusion during segmentation stage and late fusion after segmentation for improving the classification process. The extracted features input the Adaboost multiclass classifier with labels from the corresponding song (tala). We test the classifier on online dance videos and on an Indian classical dance dataset prepared in our lab. The algorithms were tested for accuracy and correctness in identifying the dance postures.
机译:提取和识别来自非约束在线视频序列的复杂人体运动是一个有趣的任务。在本文中,使用属于印度古典舞蹈形式的非纵横视频序列来接近课程的复杂问题。使用用于分割的离散小波变换和本地二进制模式(LBP)特征来开发新的分段模型。从后续视频帧中的本地人类形状变化创建2D点云。分类器由Zernike Moments,Hu矩,形状签名,LBP功能和HAAR功能计算的5种类型的功能。我们还探索多个特征融合模型,在分割阶段期间具有早期融合,并在分割后进行后期融合,以改善分类过程。提取的功能将Adaboost多字符分类器输入了来自相应歌曲(TALA)的标签。我们在在线舞蹈视频和在我们实验室准备的印度古典舞蹈数据集上测试分类器。在识别舞蹈姿势时,测试了算法以获得准确性和正确性。

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