Brightness vs. Lightness Enhancement for Image Segmentation

L. Prapitasari
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Abstract

Videos which are taken under low light environment usually contain lots of noise with grainy look. The low light situation likewise yields under-saturated and low contrast video footages. The frames of this kind video footage, if further processed, will be the type of input that are very challenging to deal with. The aim of this work was to choose the best feature candidate, either brightness or lightness, for improving the frames quality which are then fed to the segmentation algorithm. A random residence and a campus parking lot area are the places where the video footages of this research are taken. The first step after gathering the videos is to extract the frames and converting it to 2D images, where the brightness and lightness features of the images are then solely fed into the CLAHE enhancement algorithm. The enhanced images are then fed to the chosen segmentation algorithm, called the Active Contour. From the experiments, it is proven that the enhancement based on the lightness feature outperformed the brightness based enhancement system which is proven by the better segmentation results. Moreover, from the appearance, the output of the lightness based enhancement system looks softer and the resulting image contains less artifacts.
亮度与亮度增强图像分割
在弱光环境下拍摄的视频通常包含大量的噪点和颗粒状外观。低光情况同样会产生低饱和和低对比度的视频片段。这种视频片段的帧,如果进一步处理,将是一种非常具有挑战性的输入类型。这项工作的目的是选择最好的候选特征,无论是亮度或亮度,以提高帧质量,然后馈送到分割算法。一个随机的住宅和一个校园停车场区域是这个研究的视频片段拍摄的地方。收集视频后的第一步是提取帧并将其转换为2D图像,然后将图像的亮度和亮度特征单独输入CLAHE增强算法。然后将增强后的图像输入选定的分割算法,称为主动轮廓。实验结果表明,基于亮度特征的增强效果优于基于亮度特征的增强系统,分割效果更好。此外,从外观上看,基于亮度增强系统的输出看起来更柔和,产生的图像包含更少的伪影。
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