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Vehicle Detection and Tracking Using Machine Learning Techniques

机译:使用机器学习技术进行车辆检测和跟踪

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摘要

More than two decades machine learning techniques have been applied in multidisciplinary fields in order to find more accurate, efficient and effective solutions. This research tries to detect vehicles in images and videos. It deploys a dataset from Udacity in order to train the developed machine learning algorithms. Support Vector Machine (SVM) and Decision Tree (DT) algorithms have been developed for the detection and tracking tasks. Python programming language have been utilized as the development language for the creation and training of both models. These two algorithms have been developed, trained, tested, and compared to each other to specify the weaknesses and strengths of each of them, although to present and suggest the best model among these two. For the evaluation purpose multiple techniques are used in order to compare and identify the more accurate model. The primary goal and target of the paper is to develop a system in which the system should be able to detect and track the vehicles automatically whether they are static or moving in images and videos.
机译:超过二十年的机器学习技术已应用于多学科领域,以寻找更准确,高效且有效的解决方案。该研究试图检测图像和视频中的车辆。它从Udacity部署了数据集,以便培训开发的机器学习算法。支持向量机(SVM)和决策树(DT)算法用于检测和跟踪任务。 Python编程语言已被用作创建和培训两种模型的开发语言。这两种算法已经开发,训练,测试,并相互比较,以指定每个算法,虽然呈现并表明这两个中的最佳模型,但是仍然可以指定它们中的每一个的弱点和强度。对于评估目的,使用多种技术来比较和识别更准确的模型。本文的主要目标和目标是开发一个系统,其中系统应该能够自动检测和跟踪车辆,无论它们是静态还是在图像和视频中移动。

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