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Automated Visual Recognition of Construction Equipment Actions Using Spatio-Temporal Features and Multiple Binary Support Vector Machines

机译:利用时空特征和多个二元支持向量机对建筑设备动作进行自动视觉识别

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Video recording of construction operations provides an understandable data that could be used to analyze and improve construction performance. Despite the benefits, manual stopwatch study of previously recorded videos can be labor-intensive, may suffer from biases of the observers, and impractical after substantial period of observations. To address these limitations, this paper presents a new vision-based method for automated action recognition of construction equipment from different camera viewpoints. This is particularly a challenging task as construction equipment can be partially occluded and they usually come in wide variety of sizes and appearances. The scale and pose of the equipment action can also significantly vary based on the camera configurations. In the proposed method, first a video is represented as a collection of spatio-temporal features by extracting space-time interest points and describing each feature with a histogram of oriented gradients (HOG). The algorithm automatically learns the probability distributions of the spatio-temporal features and action categories using a multiple binary Support Vector Machine (SVM) classifier. This strategy handles noisy feature points arisen from typical dynamic backgrounds. Given a novel video sequence, the multiple binary SVM classifier recognizes and localizes multiple equipment actions in long and dynamic video sequences containing multiple equipment actions. We have exhaustively tested our algorithm on 1,200 videos from earthmoving operations. Results with average accuracy of 85% across all categories of equipment actions reflect the promise of the proposed method for automated performance monitoring.
机译:施工过程的视频记录提供了可理解的数据,可用于分析和改善施工性能。尽管有很多好处,但对以前录制的视频进行手动秒表研究可能会很费力,可能会受到观察者的偏见的困扰,并且在进行大量观察后不切实际。为了解决这些局限性,本文提出了一种基于视觉的新方法,可以从不同的摄像机角度对建筑设备进行自动动作识别。这是一项特别具有挑战性的任务,因为建筑设备可能会被部分封闭,并且它们通常具有多种尺寸和外观。设备动作的比例和姿势也可能根据相机配置而显着变化。在提出的方法中,首先,通过提取时空兴趣点并使用定向梯度直方图(HOG)来描述每个特征,将视频表示为时空特征的集合。该算法使用多二进制支持向量机(SVM)分类器自动学习时空特征和动作类别的概率分布。该策略处理由典型动态背景引起的嘈杂特征点。在给定新颖的视频序列的情况下,多个二进制SVM分类器可以识别并定位包含多个设备动作的长动态视频序列中的多个设备动作。我们已经对推土作业中的1,200个视频进行了详尽的测试。所有设备动作类别的平均准确度为85%的结果反映了所提出的自动性能监控方法的希望。

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