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Efficient Action Recognition with MoFREAK

机译:高效动作识别与Mofreak

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Recent work shows that local binary feature descriptors are effective for increasing the efficiency of object recognition, while retaining comparable performance to other state of the art descriptors. An extension of these approaches to action recognition in videos would facilitate huge gains in efficiency, due to the computational advantage of computing a bag-of-words representation with the Hamming distance rather than the Euclidean distance. We present a new local spatio-temporal descriptor for action recognition that encodes both the appearance and motion in a scene with a short binary string. The first bytes of the descriptor encode the appearance and some implicit motion, through an extension of the recently proposed FREAK descriptor. The remaining bytes strengthen the motion model by building a binary string through local motion patterns. We demonstrate that by exploiting the binary makeup of this descriptor, it is possible to greatly reduce the running time of action recognition while retaining competitive performance with the state of the art.
机译:最近的研究表明,局部二元特征描述符是有效地提高目标识别的效率,同时保持相当的性能,现有技术描述的另一种状态。这些延伸接近在视频行为识别将有利于效率的巨大收益,由于计算与汉明距离而不是欧氏距离袋的词表示的计算优势。我们提出了一个新的本地时空描述符动作识别编码的外观和运动都在一个场景中短二进制字符串。描述符的第一字节编码的外观和一些隐式运动,通过最近提出FREAK描述符的扩展。其余字节加强通过建立通过当地的运动模式的二进制字符串的运动模型。我们证明,通过利用该描述符的二进制妆,就可以大大降低动作识别的运行时间,同时保持与现有技术的有竞争力的表现。

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