Automatic Feature Extraction and Traffic Management Using Machine Learning and Open CV Model

M. Prakash, C. Saravanakumar, S. Lakshmi, J. Rose, B. Praba
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引用次数: 4

Abstract

Artificial intelligence covers a vast area of the real time domain which supports humans for all activities. Machine learning (ML) techniques learn the data and react based on the properties of these data. The properties are identified by extracting the features from the extracted data. Image and video processing methods are essentials in real time application due the IoT (Internet of Things) devices. The data of these types of data is more complex and also high dimensional in nature. These dimensions are reduced by performing reduction techniques before performing the classification process. The proposed ML model targets the traffic management by automating the traffic light based on the flow in the road. The traffic priority is assigned based on the congestion level on the road. The traffic classification is done by considering different features and infrastructure maintained by the city. Existing system suffers the problem due to the following reasons such as traffic congestion, longer waiting time, improper maintenance of the traffic signal, and high carbon emission and so on. The objective of the proposed model is to reduce the traffic congestion by performing traffic flow conditions and make the people comfortable level during the travel.
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基于机器学习和开放CV模型的自动特征提取和流量管理
人工智能涵盖了实时领域的广阔领域,它支持人类的所有活动。机器学习(ML)技术学习数据并根据这些数据的属性做出反应。通过从提取的数据中提取特征来识别属性。由于物联网(IoT)设备的出现,图像和视频处理方法在实时应用中至关重要。这类数据的数据比较复杂,本质上也是高维的。在执行分类过程之前,通过执行约简技术来减少这些维度。提出的机器学习模型以交通管理为目标,根据道路流量自动设置红绿灯。交通优先级是根据道路上的拥堵程度来分配的。交通分类是通过考虑城市的不同特征和基础设施来完成的。现有系统存在交通拥堵、等待时间长、交通信号维护不当、碳排放高等问题。该模型的目标是通过模拟交通流条件来减少交通拥堵,使人们在出行过程中感到舒适。
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