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首页> 外文期刊>IEEE transactions on industrial informatics >Discern Depth Under Foul Weather: Estimate PM_2.5 for Depth Inference
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Discern Depth Under Foul Weather: Estimate PM_2.5 for Depth Inference

机译:污声深度犯规天气:估计PM_2.5深度推理

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摘要

Nowadays, haze is a common and serious problem and PM2.5 is a main measurement for air quality. Current methods estimate the level of primary pollutant with professional instruments, which is expensive and inconvenient. Moreover, with haze, the captured images will be unclear and are difficult to estimate the depth of the scene using passive methods. This article proposes a cheap, fast, and convenient PM2.5 estimation method that only need a captured image using daily-life devices, and further, discerns the depth of the scene using the estimated PM2.5. We learn haze-relevant classified mapping via the hybrid convolutional neural network and combine the high-level features extracted from the convolutional layer with ground-truth PM2.5 to train support vector regression. The transmission map is computed using nonlocal sparse priors, and the depth map is inferred using the estimated PM2.5 value through the atmospheric scattering model. Experimental results demonstrate that our method achieves accurate PM2.5 estimation and depth inference. This could be very useful in many applications, for both clean and foul weather.
机译:如今,阴霾是一个常见而严重的问题,PM2.5是空气质量的主要测量。目前的方法估算了专业仪器的主要污染物水平,这是昂贵和不方便的。此外,利用雾度,捕获的图像将尚不清楚,并且难以使用被动方法估计场景的深度。本文提出了一种廉价,快速,方便的PM2.5估计方法,估计方法仅需要使用日常生活设备的捕获图像,然后使用估计的PM2.5辨别场景的深度。我们通过混合卷积神经网络学习Haze相关的分类映射,并将从卷积层提取的高级功能与地面真值PM2.5结合起来培训支持向量回归。使用非识别稀疏电视计算传输映射,使用估计的PM2.5通过大气散射模型推断深度图。实验结果表明,我们的方法达到了精确的PM2.5估计和深度推断。这可能在许多应用中非常有用,适合干净和犯规天气。

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