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Fast action recognition using negative space features

机译:利用负空间特征快速识别动作

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摘要

Due to the number of potential applications and their inherent complexity, automatic capture and analysis of actions have become an active research area. In this paper, an implicit method for recognizing actions in a video is proposed. Existing implicit methods work on the regions of subjects, but our proposed system works on the surrounding regions, called negative spaces, of the subjects. Extracting features from negative spaces facilitates the system to extract simple, yet effective features for describing actions. These negative-space based features are robust to deformed actions, such as complex boundary variations, partial occlusions, non-rigid deformations and small shadows. Unlike other implicit methods, our method does not require dimensionality reduction, thereby significantly improving the processing time. Further, we propose a new method to detect cycles of different actions automatically. In the proposed system, first, the input image sequence is background segmented and shadows are eliminated from the segmented images. Next, motion based features are computed for the sequence. Then, the negative space based description of each pose is obtained and the action descriptor is formed by combining the pose descriptors. Nearest Neighbor classifier is applied to recognize the action of the input sequence. The proposed system was evaluated on both publically available action datasets and a new fish action dataset for comparison, and showed improvement in both its accuracy and processing time. Moreover, the proposed system showed very good accuracy for corrupted image sequences, particularly in the case of noisy segmentation, and lower frame rate. Further, it has achieved highest accuracy with lowest processing time compared with the state-of-art methods.
机译:由于潜在应用的数量及其固有的复杂性,动作的自动捕获和分析已成为一个活跃的研究领域。本文提出了一种隐式的视频动作识别方法。现有的隐式方法适用于主题区域,但是我们提出的系统适用于主题的周围区域(称为负空间)。从负空间提取特征有助于系统提取简单但有效的特征来描述动作。这些基于负空间的特征对于变形动作(例如复杂的边界变化,部分遮挡,非刚性变形和小的阴影)具有鲁棒性。与其他隐式方法不同,我们的方法不需要降维,从而大大缩短了处理时间。此外,我们提出了一种新的方法来自动检测不同动作的周期。在提出的系统中,首先,对输入图像序列进行背景分割,并从分割的图像中消除阴影。接下来,为序列计算基于运动的特征。然后,获得每个姿势的基于负空间的描述,并通过组合姿势描述符来形成动作描述符。最近邻分类器用于识别输入序列的作用。拟议的系统在公开的行动数据集和新的鱼类行动数据集上进行了评估,以进行比较,并显示出其准确性和处理时间的改善。而且,所提出的系统对于损坏的图像序列表现出非常好的准确性,特别是在噪声分割的情况下,并且帧速率较低。此外,与现有技术方法相比,它以最短的处理时间实现了最高的精度。

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