Moving Object Detection Based on Clustering and Event-Based Camera

Hanan Abu-Mariah, W. Ashour
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Abstract

The Moving object detection as a problem in computer vision, has the attention of researchers for its need of different applications. Event cameras are used to support moving object detection missions depending on the event camera efficiently capturing the events of moving objects compared to classic cameras. In this paper, we proposed a model that used a clustering algorithm as a machine learning approach to help detect moving objects that were captured using an event camera. The proposed model used Hierarchical clustering algorithm called “Agglomerative” and compared to partitioning and density-based clustering algorithms for the mission of detecting moving objects. Moreover, the model shows better results compared to others in previous studies with “92.07” F1-score as a performance measure.
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基于聚类和事件相机的运动目标检测
运动目标检测作为计算机视觉中的一个重要问题,因其不同的应用需求而受到研究人员的关注。事件相机用于支持运动目标检测任务,依赖于事件相机比经典相机更有效地捕捉运动目标的事件。在本文中,我们提出了一个模型,该模型使用聚类算法作为机器学习方法来帮助检测使用事件相机捕获的移动物体。该模型采用了称为“Agglomerative”的分层聚类算法,并将其与基于分区和基于密度的聚类算法进行了比较,用于检测运动目标。此外,该模型以“92.07”f1分数作为性能度量,与以往的研究相比,显示出更好的结果。
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