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首页> 外文期刊>Sensors and Actuators, A. Physical >Comparative signal to noise ratio as a determinant to select smartphone image sensor colour channels for analysis in the UVB
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Comparative signal to noise ratio as a determinant to select smartphone image sensor colour channels for analysis in the UVB

机译:与决定因子的比较信号选择智能手机图像传感器颜色通道以进行UVB分析

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摘要

The signal to noise ratio (SNR) is an important consideration for any scientific image sensor application, particularly the relatively low light involved with observations of the solar disc at a discrete ultraviolet-B (UVB) wavelength using an unmodified smartphone image sensor. In particular, the SNR of each of the primary image sensor colour channels (red, green and blue) is a critical step in determining which colour channel signal to analyse for any characterisation research. In each image, the solar disc appears as a very small pale-magenta dot. In this paper, the SNR of each colour channel response for solar UVB, alongside their chromatic transforms were analysed for a stacked, mosaic filtered, backside illuminated complementary metal oxide semiconductor (CMOS) image sensor. Using data visualisation techniques, it has become clear that specific colour channels, in this case - the red channel, provide the strongest SNR for use in characterisation and other analytical research. The effects of a straightforward adaptive threshold and de-noising algorithm (median filter) on each colour channel's SNR are also analysed. The variation of the colour channels' SNR with external factors, including irradiance, is modelled. The effects of the prevalence of noise features, such as hot pixels and dark noise, are also observed. It has been found that before the median filter is applied, most of the signal, particularly for the green colour channel, is from these noise features in some image sensors - representing a 'false positive' in these low-light conditions. A chrominance model using a weighted proportion of the red and blue colour channels that provides the best SNR when sensing in the UVB waveband for the sensor has been developed and evaluated. (C) 2018 Elsevier B.V. All rights reserved.
机译:信噪比(SNR)是对任何科学图像传感器应用的重要考虑因素,特别是使用未修改的智能手机图像传感器在离散的紫外-B(UVB)波长处的太阳能光盘观察的相对低光。特别地,每个主图像传感器颜色通道(红色,绿色和蓝色)的SNR是确定用于分析任何表征研究的颜色信道信号的关键步骤。在每个图像中,太阳能光盘显示为非常小的浅品质点。在本文中,分析了太阳能UVB的每个颜色频道响应的SNR,以及它们的堆积变换,用于堆叠的马赛克过滤,背面照明互联金属氧化物半导体(CMOS)图像传感器。使用数据可视化技术,它已经清楚地清楚地,在这种情况下,在这种情况下 - 红色通道,提供了最强的SNR,用于表征和其他分析研究。还分析了直接自适应阈值和去噪算法(中值滤波器)对每个颜色通道的SNR的影响。建模了具有外部因素的颜色通道SNR的变化,包括辐照度。还观察到噪声特征的患病率,例如热像素和暗噪声。已经发现,在应用中值滤波器之前,大多数信号,特别是对于绿色频道,来自一些图像传感器中的这些噪声特征 - 在这些低光条件下表示“假阳性”。通过红色和蓝色通道的加权比例的色度模型,当已经开发并评估了传感器的UVB波段中的最佳SNR时提供了最佳SNR。 (c)2018年elestvier b.v.保留所有权利。

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