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BNNG Algorithm Modeling for Vehicle Classification Recognition under Non Line-of -sight Environment

机译:非视距环境下车辆分类识别的BNNG算法建模

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摘要

At present, the automatic classification of vehicles on roads is mostly based on image recognition, and there are defects in adaptability under non-line-of-sight environments. In this paper, based on the similarity of the integration of the ecosystem model and multi-neural network model, an artificial neural network group (BNNG) algorithm was proposed. The vehicle’s driving acoustic signal was taken as the research object, and it was calculated using the Artificial Neural Network (BNNG) algorithm to achieve automatic classification and recognition of vehicle models. Through experimental tests, it is shown that under non-line-of-sight environments, the accuracy of vehicle classification can be improved, and the misrecognition rate of similar models can be greatly reduced. This provided a new method for the automatic classification and identification of vehicles on roads, which was of great significance to monitor vehicle safety in non-line-of-sight environments.
机译:当前,道路上车辆的自动分类主要基于图像识别,并且在非视距环境下的适应性存在缺陷。本文基于生态系统模型与多神经网络模型集成的相似性,提出了一种人工神经网络组(BNNG)算法。以车辆的行驶声信号为研究对象,并使用人工神经网络(BNNG)算法对其进行计算,以实现车辆模型的自动分类和识别。通过实验测试表明,在非视距环境下,可以提高车辆分类的准确性,并且可以大大降低相似模型的误识别率。这为道路上的车辆自动分类和识别提供了一种新方法,这对于监视非视距环境中的车辆安全具有重要意义。

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