School of Computer Science and Engineering, Southeast University , Nanjing , P.R. China.
Key Laboratory of Computer Network and Information Integration (Southeast University), Ministry of Education , Nanjing , P.R. China.
Comput Assist Surg (Abingdon). 2019 Oct;24(sup1):53-61. doi: 10.1080/24699322.2018.1560100. Epub 2019 Jan 28.
We present a novel technique to distinguish between an original image and its histogram equalized version. Histogram equalization and superpixel segmentation such as SLIC (simple linear iterative clustering) are very popular image processing tools. Based on these two concepts, we introduce a method for finding whether an image (grayscale) is histogram equalized or not. Because sometimes we see images that look visually similar but they are actually processed or changed by some image enhancement process such as histogram equalization. We can merely infer whether the image is dark, bright or has a small dynamic range. Moreover, we also compare the result of SLIC superpixels with three other superpixel segmentation algorithms namely, quick shift, watersheds, and Felzenszwalb's segmentation algorithm.
我们提出了一种区分原始图像与其直方图均衡化版本的新方法。直方图均衡化和超像素分割(如 SLIC)是非常流行的图像处理工具。基于这两个概念,我们引入了一种方法来判断图像(灰度)是否经过直方图均衡化处理。因为有时我们看到的图像看起来视觉上相似,但实际上它们是经过图像处理或增强处理(如直方图均衡化)的。我们只能推断图像是暗的、亮的还是动态范围小。此外,我们还将 SLIC 超像素的结果与其他三种超像素分割算法(快速移动、分水岭和 Felzenszwalb 分割算法)进行了比较。