Abstract
AbstractWith the development of image recognition technology, face, body shape, and other factors have been widely used as identification labels, which provide a lot of convenience for our daily life. However, image recognition has much higher requirements for image conditions than traditional identification methods like a password. Therefore, image enhancement plays an important role in the process of image analysis for images with noise, among which the image of low-light is the top priority of our research. In this paper, a low-light image enhancement method based on the enhanced network module optimized Generative Adversarial Networks(GAN) is proposed. The proposed method first applied the enhancement network to input the image into the generator to generate a similar image in the new space, Then constructed a loss function and minimized it to train the discriminator, which is used to compare the image generated by the generator with the real image. We implemented the proposed method on two image datasets (DPED, LOL), and compared it with both the traditional image enhancement method and the deep learning approach. Experiments showed that our proposed network enhanced images have higher PNSR and SSIM, the overall perception of relatively good quality, demonstrating the effectiveness of the method in the aspect of low illumination image enhancement.
Funder
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Subject
Computer Networks and Communications,Hardware and Architecture,Media Technology,Software
Reference38 articles.
1. Abadi M, Barham P, Chen J, et al (2016) Tensorflow: A system for large-scale machine learning[C]. 12th USENIX Symposium on Operating Systems Design and Implementation (OSDI 16) 265–283
2. bdullah-Al-Wadud M, Kabir MH, Dewan MAA et al (2007) A dynamic histogram equalization for image contrast enhancement[J]. IEEE Trans Consumer Electron 53(2):593–600
3. Cai J, Gu S, Zhang L (2018) Learning a deep single image contrast enhancer from multi-exposure images[J]. IEEE Trans Image Process 27(4):2049–2062
4. Chen C, Chen Q, Xu J et al (2018) Learning to see in the dark[C]. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 3291–3300
5. Chen C, Chen Q, Xu J et al (2018) Learning to see in the dark[C]. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 3291–3300
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