首页> 外文会议>Sensors, Cameras, and Applications for Digital Photography >Color filter array recovery using a threshold-based variable number of gradients
【24h】

Color filter array recovery using a threshold-based variable number of gradients

机译:使用基于阈值的可变数量的渐变进行滤色器阵列恢复

获取原文
获取原文并翻译 | 示例

摘要

Abstract: The increase in the popularity of digital cameras over the past few years has provided motivation to improve all elements of the digital photography signal chain. As a contribution towards this common goal, we present a new CFA recovery algorithm, which recovers full-color images from single-detector digital color cameras more accurately than previously published techniques. This CFA recovery algorithm uses a threshold-based variable number of gradients. In order to recover missing color information at each pixel, we measure the gradient in eight directions based on a 5 $MUL 5 neighborhood surrounding that pixel. Each gradient value is defined as a linear combination of the absolute differences of the like-colored pixels in this neighborhood. We then consider the entire set of eight gradients to determine a threshold of acceptable gradients. For all of the gradients that pass the threshold test, we use color components from the corresponding areas of the 5 $MUL 5 neighborhoods to determine the missing color values. We test our CFA recovery algorithm against bilinear interpolation and a single- gradient method. Using a set of standard test images, we show that our CFA recovery algorithm reduces the MSE by over 50 percent compared to conventional color recovery algorithms. In addition, the resolution test we developed also show that the new CFA recovery algorithm increases the resolution by over 15 percent. The subjective qualities of test images recovered using the new algorithm also show noticeable improvement. !5
机译:摘要:过去几年中,数码相机的日益普及为改善数码摄影信号链的所有要素提供了动力。为了实现这一共同目标,我们提出了一种新的CFA恢复算法,与以前发布的技术相比,该算法可以更准确地从单检测器数码彩色相机中恢复全彩色图像。此CFA恢复算法使用基于阈值的可变数量的梯度。为了恢复每个像素上丢失的颜色信息,我们基于围绕该像素的5 $ MUL 5邻域在八个方向上测量梯度。每个梯度值定义为该邻域中相似颜色像素的绝对差的线性组合。然后,我们考虑整个八个梯度集合,以确定可接受的梯度阈值。对于所有通过阈值测试的渐变,我们使用来自5个$ MUL 5邻域的相应区域的颜色分量来确定缺失的颜色值。我们针对双线性插值和单梯度方法测试了CFA恢复算法。通过使用一组标准测试图像,我们证明了与传统的颜色恢复算法相比,我们的CFA恢复算法将MSE降低了50%以上。此外,我们开发的分辨率测试还显示,新的CFA恢复算法将分辨率提高了15%以上。使用新算法恢复的测试图像的主观质量也显示出明显的改进。 !5

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号