现场演示:基于监督学习的图像增强视觉量化

W. Zhang, Junfeng Chang, Zizhao Peng, Lei Chen, F. An
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引用次数: 0

摘要

本演示展示了用于图像增强的视觉量化框架,其中训练了多变量高斯(MVG)模型来评估图像可见性。图像的可见性是由诸如灰色通道、黄蓝色通道和红绿色通道的对比能量、平均饱和度和梯度等统计特征来描述的。然后应用预测的可见性分数来定义用于图像增强的自适应直方图均衡化剪辑参数。最后,在FPGA上实现了硬件架构,以演示实时图像增强的结果。
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Live Demonstration: Supervised-learning-based Visual Quantification for Image Enhancement
This demonstration showcases a framework of visual quantification for image enhancement where multivariate Gaussian (MVG) models are trained to assess image visibility. The visibility of an image is depicted by statistical features such as the contrast energy of the gray channel, yellow-blue channel, and red-green channel, average saturation, and gradients. The predicted visibility scores are then applied to define adaptive histogram equalization clip parameters for image enhancement. Finally, the hardware architecture is implemented on an FPGA to demonstrate the results for real-time image enhancement.
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