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Indian Classical Dance Action Identification and Classification with Convolutional Neural Networks

机译:卷积神经网络的印度古典舞动作识别与分类

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Extracting and recognizing complex human movements from unconstrained online/offline video sequence is a challenging task in computer vision. This paper proposes the classification of Indian classical dance actions using a powerful artificial intelligence tool convolutional neural networks (CNN). In this work, human action recognition on Indian classical dance videos is performed on recordings from both offline (controlled recording) and online (live performances, YouTube) data. The offline data is created with ten different subjects performing 200 familiar dance mudras/poses from different Indian classical dance forms under various background environments. The online dance data is collected from YouTube for ten different subjects. Each dance pose is occupied for 60 frames or images in a video in both the cases. CNN training is performed with 8 different sample sizes, each consisting of multiple sets of subjects. The remaining 2 samples are used for testing the trained CNN. Different CNN architectures were designed and tested with our data to obtain a better accuracy in recognition. We achieved a 93.33% recognition rate compared to other classifier models reported on the same dataset.
机译:从不受约束的在线/离线视频序列中提取和识别复杂的人类动作是计算机视觉中的一项艰巨任务。本文提出了使用功能强大的人工智能工具卷积神经网络(CNN)对印度古典舞蹈动作进行分类的方法。在这项工作中,对印度古典舞视频的人为动作识别是通过来自离线(受控录制)和在线(现场表演,YouTube)数据的录制进行的。离线数据是由十个不同的主题创建的,这些主题在不同的背景环境下,执行来自不同印度古典舞蹈形式的200个熟悉的舞蹈手印/姿势。在线舞蹈数据是从YouTube收集的十个不同主题的数据。在两种情况下,每个舞蹈姿势都占用60帧或视频中的图像。 CNN训练使用8种不同的样本量进行,每种样本量均由多组受试者组成。其余2个样本用于测试经过训练的CNN。使用我们的数据设计和测试了不同的CNN架构,以实现更好的识别准确性。与同一数据集上报告的其他分类器模型相比,我们实现了93.33%的识别率。

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