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VisNet: Deep Convolutional Neural Networks for Forecasting Atmospheric Visibility

机译:VisNet:用于预测大气能见度的深度卷积神经网络

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摘要

Visibility is a complex phenomenon inspired by emissions and air pollutants or by factors, including sunlight, humidity, temperature, and time, which decrease the clarity of what is visible through the atmosphere. This paper provides a detailed overview of the state-of-the-art contributions in relation to visibility estimation under various foggy weather conditions. We propose VisNet, which is a new approach based on deep integrated convolutional neural networks for the estimation of visibility distances from camera imagery. The implemented network uses three streams of deep integrated convolutional neural networks, which are connected in parallel. In addition, we have collected the largest dataset with three million outdoor images and exact visibility values for this study. To evaluate the model’s performance fairly and objectively, the model is trained on three image datasets with different visibility ranges, each with a different number of classes. Moreover, our proposed model, VisNet, evaluated under dissimilar fog density scenarios, uses a diverse set of images. Prior to feeding the network, each input image is filtered in the frequency domain to remove low-level features, and a spectral filter is applied to each input for the extraction of low-contrast regions. Compared to the previous methods, our approach achieves the highest performance in terms of classification based on three different datasets. Furthermore, our VisNet considerably outperforms not only the classical methods, but also state-of-the-art models of visibility estimation.
机译:能见度是一种复杂的现象,受排放和空气污染物的影响,或者受日光,湿度,温度和时间等因素的影响,这些因素会降低通过大气可见的东西的清晰度。本文详细概述了在各种有雾天气条件下与能见度估算相关的最新技术成果。我们提出了VisNet,这是一种基于深度集成卷积神经网络的新方法,用于估计与相机图像之间的可见距离。所实现的网络使用三个深度集成的卷积神经网络流,它们并行连接。此外,我们还为该研究收集了最大的数据集,其中包含300万张室外图像和确切的可见性值。为了公平,客观地评估模型的性能,我们在三个具有不同可见度范围的图像数据集上训练了该模型,每个数据集具有不同的类别数。此外,我们提出的模型VisNet在不同的雾密度情况下进行了评估,它使用了多种图像。在馈入网络之前,在频域中对每个输入图像进行滤波以除去低级特征,然后将光谱滤波器应用于每个输入以提取低对比度区域。与以前的方法相比,我们的方法在基于三个不同的数据集的分类方面实现了最高的性能。此外,我们的VisNet不仅优于传统方法,而且还优于可见性估算的最新模型。

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