Solar power plant detection on multi-spectral satellite imagery using weakly-supervised CNN with feedback features and m-PCNN fusion

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Abstract

Most of the traditional convolutional neural networks (CNNs) implement bottom-up approach (feed-forward) for image classifications. However, many scientific studies demonstrate that visual perception in primates rely on both bottom-up and top-down connections. Therefore, in this work, we propose a CNN network with feedback structure for solar power plant detection on middle-resolution satellite images. To express the strength of the top-down connections, we introduce feedback CNN network (FB-Net) to a baseline CNN model used for solar power plant classification on multi-spectral satellite data. Moreover, we introduce a method to improve class activation mapping (CAM) to our FB-Net, which takes advantage of multi-channel pulse coupled neural network (m-PCNN) for weakly-supervised localization of the solar power plants from the features of proposed FB-Net. For the proposed FB-Net CAM with m-PCNN, experimental results demonstrated promising results on both solar-power plant image classification and detection task.

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APA

Imamoglu, N., Kimura, M., Miyamoto, H., Fujita, A., & Nakamura, R. (2017). Solar power plant detection on multi-spectral satellite imagery using weakly-supervised CNN with feedback features and m-PCNN fusion. In British Machine Vision Conference 2017, BMVC 2017. BMVA Press. https://doi.org/10.5244/c.31.183

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