An Improved Image Enhancement Technique for Low Light Images Using Deep Learning Approach

Rajesh Gopakumar, Karunakar A. Kotegar
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引用次数: 0

Abstract

Image enhancement in facial detection is a critical component of facial recognition systems. Face identification in an uncontrolled environment is affected by a multitude of difficulties such as poor light levels, low-resolution cameras, occlusions from surrounding objects, and tiny faces in distant photographs. Low signal-to-noise ratio, low brightness, and noise in low-light photographs lead to issues such as color distortion and poor visibility, which makes it challenging to identify faces. Many techniques to enhance low-light images have been developed, improving the face detection system’s accuracy. This will improve the picture at the expense of higher running costs and lower model robustness. The proposed technique, DCE-Net, uses performance-intensive deep learning and light-enhanced image properties. A non-referential deep learning technique was employed to acquire and modify the image attributes. A set of loss functions designed to perform without ground-truth images is the foundation of the deep network learning employed. Compared to the current referential methods, straightforward non-referential light estimation curve mapping minimizes the computational demand for low-light image improvement. Several experiments conducted on standard datasets demonstrated the efficacy and reduced computational requirements of the approach. The effectiveness of this method is supported by both the qualitative and quantitative outcomes. The PSNR and SSIM computation for paired images shows promising results using the proposed image enhancement technique.
利用深度学习方法改进弱光图像增强技术
面部检测中的图像增强是面部识别系统的重要组成部分。在不受控制的环境中进行人脸识别会遇到很多困难,如光线不足、低分辨率相机、周围物体遮挡以及远处照片中的人脸太小等。低信噪比、低亮度和低光照照片中的噪声会导致色彩失真和可视性差等问题,从而给人脸识别带来挑战。为了提高人脸检测系统的准确性,人们开发了许多增强弱光图像的技术。但这样做的代价是较高的运行成本和较低的模型鲁棒性。所提出的 DCE-Net 技术采用了性能密集型深度学习和光增强图像特性。采用非推理深度学习技术来获取和修改图像属性。在没有地面实况图像的情况下设计的一组损失函数是所采用的深度网络学习的基础。与当前的参考方法相比,直接的非参考光线估计曲线映射可最大限度地降低低照度图像改进的计算需求。在标准数据集上进行的几项实验证明了该方法的有效性,并降低了计算要求。定性和定量结果都证明了这种方法的有效性。配对图像的 PSNR 和 SSIM 计算结果表明,使用所提出的图像增强技术可以获得良好的效果。
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CiteScore
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