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Recognizing human action and identity based on affine-SIFT

机译:基于仿射SIFT识别人类行为和身份

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This paper presents a novel method based on Affine-SIFT detector to capture motion for human action recognition. More specifically, we propose a new action representation based on computing a rich set of descriptors from Affine-SIFT (ASIFT) key point trajectories. Since most previous approaches to human action recognition typically focus on action classification or localization, these approaches usually ignore the information about human identity. We propose using quantized local SIFT descriptors to represent human identity. A compact yet discriminative semantics visual vocabulary was built by a Latent Topic model for high-level representation. Given a novel video sequence, our algorithm can not only categorize human actions contained in the video, but also verify the persons who perform the actions. We test our algorithm on two datasets: the KTH human motion dataset and our action dataset. Our results reflect the promise of our approach.
机译:本文提出了一种基于仿射SIFT检测器的捕获运动以进行人类动作识别的新方法。更具体地说,我们提出了一种新的动作表示形式,它基于仿射SIFT(ASIFT)关键点轨迹计算出的一组丰富的描述符。由于大多数先前的人类动作识别方法通常都集中在动作分类或本地化上,因此这些方法通常会忽略有关人类身份的信息。我们建议使用量化的局部SIFT描述符来表示人类身份。潜在主题模型为高级表示构建了紧凑而有区别的语义视觉词汇。给定一个新颖的视频序列,我们的算法不仅可以对视频中包含的人类动作进行分类,还可以验证执行动作的人员。我们在两个数据集上测试我们的算法:KTH人体运动数据集和我们的动作数据集。我们的结果反映了我们方法的希望。

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