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Multiple-Vehicle Tracking in the Highway Using Appearance Model and Visual Object Tracking

机译:使用外观模型和视觉对象跟踪的高速公路多车跟踪

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摘要

In recent decades, due to the groundbreaking improvements in machine vision, many daily tasks are performed by computers. One of these tasks is multiple-vehicle tracking, which is widely used in different areas such as video surveillance and traffic monitoring. This paper focuses on introducing an efficient novel approach with acceptable accuracy. This is achieved through an efficient appearance and motion model based on the features extracted from each object. For this purpose, two different approaches have been used to extract features, i.e. features extracted from a deep neural network, and traditional features. Then the results from these two approaches are compared with state-of-the-art trackers. The results are obtained by executing the methods on the UA-DETRACK benchmark. The first method led to 58.9% accuracy while the second method caused up to 15.9%. The proposed methods can still be improved by extracting more distinguishable features.
机译:近几十年来,由于机器愿景的突破性改进,计算机执行了许多日常任务。这些任务之一是多车辆跟踪,其广泛用于不同领域,例如视频监控和流量监控。本文侧重于引入具有可接受的准确性的有效新方法。这是通过基于每个对象提取的特征的有效外观和运动模型来实现的。为此目的,已经使用了两种不同的方法来提取特征,即从深神经网络中提取的特征和传统特征。然后将这两种方法的结果与最先进的跟踪器进行比较。通过在UA-Detrack基准测试上执行方法获得的结果。第一种方法的准确度为58.9%,而第二种方法均导致15.9%。通过提取更区别的特征仍然可以提高所提出的方法。

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