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Deep Single Image Enhancer

2019 16th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS)(2019)

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Abstract
Surveillance cameras can be deployed in various environments where lighting conditions are constantly changing. However, due to the limited dynamic range of current image sensors, the captured images are only low dynamic range images that usually suffer from over-exposure and under-exposure situations where important details are lost. Therefore, it is critical to recover the lost details of such images in order to improve visual experience for observers and performance for possible computer vision processing. In this paper, we propose a reformulated Laplacian pyramid and a convolutional neural network (CNN) model to enhance and recover the lost detail of a degraded image. The reformulated Laplacian first decomposes the image into two sub-images that contain global and local image features, respectively. The global features and local features are processed by the proposed CNN model to manipulate the global luminance terrain and enhance local details. The final image is obtained by reconstructing the CNN generated local and global features. Various experiments have been conducted. The results demonstrate that the proposed model outperforms the state-of-the-art methods.
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Key words
reformulated Laplacian pyramid model,low dynamic range imaging,computer vision processing,image sensors,lighting conditions,surveillance cameras,deep single image enhancer,global luminance terrain,CNN model,convolutional neural network model
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