2020
DOI: 10.25046/aj050452
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A CNN-based Differential Image Processing Approach for Rainfall Classification

Abstract: With the aim of preventing hydro-geological risks and overcoming the problems of current rain gauges, this paper proposes a low-complexity and cost-effective video rain gauge. In particular, in this paper the authors propose a new approach to rainfall classification based on image processing and video matching process employing convolutional neural networks (CNN). The system consists of a plastic shaker, a video camera and a low cost, low power signal processing unit. The use of differential images allows for … Show more

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Cited by 6 publications
(1 citation statement)
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“…So it must optimize the ANNs and have a convenient feature extraction from remote sensing images as a preprocessing before training the dataset [5][6]. The convolution Neural Networks (CNNs) is derived from the ANNs but its layers are not fully connected like the ANNs layers; it has an excited rapid advance in computer vision [7][8]. It is based on some blocks can applied on an image as filters and then extract convolution object features from this image, these features can be used in solving many of computer vision problems, one of these problems is classification [9].…”
Section: Introductionmentioning
confidence: 99%
“…So it must optimize the ANNs and have a convenient feature extraction from remote sensing images as a preprocessing before training the dataset [5][6]. The convolution Neural Networks (CNNs) is derived from the ANNs but its layers are not fully connected like the ANNs layers; it has an excited rapid advance in computer vision [7][8]. It is based on some blocks can applied on an image as filters and then extract convolution object features from this image, these features can be used in solving many of computer vision problems, one of these problems is classification [9].…”
Section: Introductionmentioning
confidence: 99%