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A Multiobjective Piglet Image Segmentation Method Based on an Improved Noninteractive GrabCut Algorithm

机译:基于改进的非交互式GrabCut算法的多目标小猪图像分割方法

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In the video monitoring of piglets in pig farms, study of the precise segmentation of foreground objects is the work of advanced research on target tracking and behavior recognition. In view of the noninteractive and real-time requirements of such a video monitoring system, this paper proposes a method of image segmentation based on an improved noninteractive GrabCut algorithm. The functions of preserving edges and noise reduction are realized through bilateral filtering. An adaptive threshold segmentation method is used to calculate the local threshold and to complete the extraction of the foreground target. The image is simplified by morphological processing; the background interference pixels, such as details in the grille and wall, are filtered, and the foreground target marker matrix is established. The GrabCut algorithm is used to split the pixels of multiple foreground objects. By comparing the segmentation results of various algorithms, the results show that the segmentation algorithm proposed in this paper is efficient and accurate, and the mean range of structural similarity is [0.88, 1]. The average processing time is 1606 ms, and this method satisfies the real-time requirement of an agricultural video monitoring system. Feature vectors such as edges and central moments are calculated and the database is well established for feature extraction and behavior identification. This method provides reliable foreground segmentation data for the intelligent early warning of a video monitoring system.
机译:在猪场的仔猪视频监控中,对前景对象的精确分割的研究是目标跟踪和行为识别的高级研究工作。针对这种视频监控系统的非交互性和实时性要求,提出了一种基于改进的非交互性GrabCut算法的图像分割方法。保留边缘和降低噪声的功能是通过双边滤波实现的。自适应阈值分割方法用于计算局部阈值并完成对前景目标的提取。通过形态学处理简化了图像;对背景干扰像素(例如格栅和墙壁中的细节)进行过滤,并建立前景目标标记矩阵。 GrabCut算法用于拆分多个前景对象的像素。通过对各种算法的分割结果进行比较,结果表明本文提出的分割算法高效,准确,结构相似度的平均范围为[0.88,1]。平均处理时间为1606µms,该方法满足了农业视频监控系统的实时性要求。计算出诸如边缘和中心矩之类的特征向量,并很好地建立了数据库,用于特征提取和行为识别。该方法为视频监控系统的智能预警提供了可靠的前景分割数据。

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