无人机监控的机器学习实现策略

B. Doraswamy, K. Krishna, M. N. Giri Prasad
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引用次数: 0

摘要

无人机技术被用于各种原因,包括军事、农业、航空摄影、监视、遥感等。基于实时处理技术,提出了一种用于公共区域犯罪盗窃的无人机监控和目标定位。以往的犯罪预测模型主要采用人工神经网络(ANN)和回归神经网络(RNN)两种预测方法,存在准确率不高、计算时间长等问题。因此,为了克服这个缺点,Cat boost机器学习已经实现,因为它使用树形原语进行预测,使物联网环境的分类速度更快。基于buffalo的Cat boost犯罪预测系统(BCPS)首先收集犯罪数据,对其进行预处理,然后提取环境特征和上下文特征,将这些特征提供给Cat boost机器学习。将这些特征组合在一起,以树的形式给出结果,为了提高准确性,本文采用了非洲水牛优化(ABO)方法。通过估计预测器,获得了用于学习目的的结果,测试端显示了犯罪盗窃检测的结果。因此,对BCPS的结果进行评估,并与以前的技术进行比较,以显示所提出模型的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Strategies for the Implementation of a Surveillance Drone
Drone technology is utilized for a variety of reasons, including military, agricultural, aerial photography, surveillance, remote sensing, and more. Based on real-time processing techniques, a drone plane is presented for monitoring and targeting public area crime theft in this proposed work. Previously crime prediction model was developed using Artificial Neural Network (ANN) and Regressive Neural Network (RNN), as they suffer from inappropriate accuracy levels and long-time computation. Thus, to overcome this drawback, Cat boost machine learning has been implemented as it uses tree-shaped primitives for the prediction that makes classification faster for the IoT environment. Buffalo-based Cat boosts Crime Prediction System (BCPS) initially collects crime data, preprocessing them, and then extracting environmental features and context features, the features are given to cat boost machine learning. The features are combined and give results as trees, and to improve accuracy, African Buffalo optimization (ABO) has been employed here. By estimating the predictors, a result has been obtained that was used for learning purposes and the testing side shows the result of crime theft detection. Thus BCPS is evaluated for results and compared with previous techniques to show the supremacy of the proposed model.
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