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Pre-processing of inputs to a neural network model for better performance in traffic scene analysis

机译:对神经网络模型的输入进行预处理,以在交通场景分析中获得更好的性能

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摘要

Artificial neural networks, which hold considerable potential for recognising and classifying spatial and temporal patterns, have been used as an efficient method for automatic traffic surveillance, which is an important research topic of intelligent transport systems. An important element in the performance of the neural networks is the composition of the input and output vectors, as well as the network architecture. However, there has been little research on the performance in relation to the attributes of the input and output vectors. In this research, various input vector properties were applied to the backpropagation model, which is the most popular neural network model, to see how the general performance would be affected by the different types of input vector. Experiments were performed with the inclusion of various grey levels, image sizes, edge detection images and combinations of edge and pixel grey information as the input vectors. The experimental results showed that the network performance, in terms of computing cost for training and prediction accuracy, was highly dependent on the characteristics of the input vectors. Two combined input vectors, the grey scale pixels and edge detection image, produced better prediction performance than either the grey values on the pixel or edges alone.
机译:人工神经网络在识别和分类时空格局方面具有巨大潜力,已被用作自动交通监控的有效方法,这是智能交通系统的重要研究课题。神经网络性能的一个重要因素是输入和输出向量的组成以及网络体系结构。但是,关于输入和输出矢量的属性的性能研究很少。在这项研究中,将各种输入矢量属性应用于反向传播模型(这是最流行的神经网络模型),以了解不同类型的输入矢量将如何影响总体性能。进行了各种灰度级,图像尺寸,边缘检测图像以及边缘和像素灰度信息组合作为输入向量的实验。实验结果表明,就训练和预测精度的计算成本而言,网络性能高度依赖于输入向量的特性。灰度像素和边缘检测图像这两个组合的输入向量产生的预测性能优于像素或边缘上的灰度值。

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