Human activity discovery aims to cluster the activities performed by humans without any prior information on what defines each activity. Most methods presented in human activity recognition are supervised, where there are labeled inputs to train the system. In reality, it is difficult to label activities data because of its huge volume and the variety of human activities. This paper proposes an unsupervised framework to perform human activity discovery in 3D skeleton sequences. First, an approach for data pre-processing is presented. In this stage, important frames are selected based on kinetic energy. Next, the displacement of joints, statistical displacements, angles, and orientation features are extracted to represent the activities information. Since not all extracted features have useful information, the dimension of features is reduced using PCA. Most methods proposed for human activity discovery are not fully unsupervised. They use pre-segmented videos before categorizing activities. To deal with this, we have used a sliding time window to segment the time series of activities with some overlapping. Then, activities are discovered by our proposed Hybrid Particle swarm optimization (PSO) with Gaussian Mutation and K-means (HPGMK) algorithm to provide diverse solutions. PSO is used due to its straightforward idea and powerful global search capability which can identify the ideal solution in a few iterations. Finally, k-means is applied to the outcome centroids from each iteration of the PSO to overcome the slow convergence rate of PSO. The experiment results on five datasets show that the proposed framework has superior performance in discovering activities compared to the other state-of-the-art methods and has increased accuracy of at least 4% on average.
翻译:人类活动的发现旨在将人类从事的活动集中在一起,而没有事先关于每项活动的定义的任何信息。在人类活动识别中显示的多数方法都受到监督,因为有标记的投入来培训该系统。在现实中,由于活动数据的数量巨大,而且人类活动种类繁多,因此很难对活动数据进行标签。本文件建议了一个未经监督的框架,在3D骨架序列中进行人类活动的发现。首先,提出了数据预处理的方法。在这个阶段,根据动能选择了重要的框架。接下来,通过移动连接、统计变换、角度和方向特征来提取活动信息。由于所有提取的准确性能都没有有用的信息,因此,功能的尺寸将使用五氯苯甲醚来减少。大多数为人类活动发现提议的方法并非完全不受监督。在对活动进行分类之前,使用预先分类的视频来进行人类活动发现。为了解决这个问题,我们用一个滑动时间窗口来将活动的时间序列与某些重叠。然后,通过我们提议的混合 Part 温优化(PSO) 和K- 方向定位框架的迁移精度的精细度范围将提高, 将显示其最差的精度的精度比率的精度比,在最差的图像中, 的精度的精度的精度的精度的精度的精度分析能力将显示的精度的精度的精度的精度的精度将显示到最细的精度的精度的精度的精度将的精度的精度的精度的精度的精度的精度的精度,其精度的精度将的精度将的精度的精度的精度能到最精度的精度,其精度的精度,其精度的精度的精度的精度的精度,其精度的精度的精度的精度的精度,其精度的精度,其精度将的精度将的精度的精度将的精度,其精度的精度,其精度,其精度的精度的精度,其精度的精度,其精度的精度的精度的精度的精度的精度的精度,其精度的精度的精度的精度的精度的精度的精度的精度的精度到