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Accurate abandoned and removed object classification using hierarchical finite state machine

机译:使用分层有限状态机进行准确的废弃和移除对象分类

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The ability of most existing approaches to classify abandoned and removed objects (AROs) in images is affected by external environmental conditions such as illumination and traffic volume because the approaches use several pre-defined threshold values and generate many falsely-classified static regions. To reduce these effects, we propose an accurate ARO classification method using a hierarchical finite state machine (FSM) that consists of pixel-layer, region-layer, and event-layer FSMs, where the result of the lower-layer FSM is used as the input of the higher-layer FSM. Each FSM is defined by a Mealy state machine with three states and several state transitions, where a support vector machine (SVM) determines the state transition based on the current state and input features such as area, intensity, motion, shape, time duration, color and edge. Because it uses the hierarchical FSM (H-FSM) structure with features that are optimally trained by SVM classifiers, the proposed ARO classification method does not require threshold values and guarantees better classification accuracy under severe environmental changes. In experiments, the proposed ARO classification method provided much higher classification accuracy and lower false alarm rate than the state-of-the-art methods in both public databases and a commercial database. The proposed ARO classification method can be applied to many practical applications such as detection of littering, illegal parking, theft, and camouflaged soldiers. (C) 2015 Elsevier B.V. All rights reserved.
机译:大多数现有方法对图像中的废弃和移除对象(ARO)进行分类的能力受外部环境条件(例如照明和交通量)的影响,因为这些方法使用了几个预定义的阈值并生成了许多错误分类的静态区域。为了减少这些影响,我们提出了一种使用分层有限状态机(FSM)的准确ARO分类方法,该方法由像素层,区域层和事件层FSM组成,其中将下层FSM的结果用作较高层FSM的输入。每个FSM由具有三个状态和多个状态转换的Mealy状态机定义,其中支持向量机(SVM)根据当前状态和输入特征(例如面积,强度,运动,形状,持续时间,颜色和边缘。由于它使用具有支持向量机分类器最佳训练功能的分层FSM(H-FSM)结构,因此所提出的ARO分类方法不需要阈值,并且可以确保在严重环境变化下更好的分类准确性。在实验中,与公共数据库和商业数据库中的最新方法相比,所提出的ARO分类方法提供了更高的分类准确性和更低的误报率。提出的ARO分类方法可以应用于许多实际应用,例如乱抛垃圾,非法停车,盗窃和伪装士兵的检测。 (C)2015 Elsevier B.V.保留所有权利。

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