Zhang Chong, Liu Yueliang, Wang Kun, Tian Jie
Department of Big Data Management and Application, School of International Economics and Management, Beijing Technology and Business University, Beijing, People's Republic of China.
CAS Key Laboratory of Molecular Imaging, Institute of Automation, Chinese Academy of Sciences, Beijing, People's Republic of China.
Phys Med Biol. 2023 Nov 10;68(22). doi: 10.1088/1361-6560/ad02d9.
Endoscopic imaging is a visualization method widely used in minimally invasive surgery. However, owing to the strong reflection of the mucus layer on the organs, specular highlights often appear to degrade the imaging performance. Thus, it is necessary to develop an effective highlight removal method for endoscopic imaging.A specular highlight removal method using a partial attention network (PatNet) for endoscopic imaging is proposed to reduce the interference of bright light in endoscopic surgery. The method is designed as two procedures: highlight segmentation and endoscopic image inpainting. Image segmentation uses brightness threshold based on illumination compensation to divide the endoscopic image into the highlighted mask and the non-highlighted area. The image inpainting algorithm uses a partial convolution network that integrates an attention mechanism. A mask dataset with random hopping points is designed to simulate specular highlight in endoscopic imaging for network training. Through the filtering of masks, the method can focus on recovering defective pixels and preserving valid pixels as much as possible.The PatNet is compared with 3 highlight segmentation methods, 3 imaging inpainting methods and 5 highlight removal methods for effective analysis. Experimental results show that the proposed method provides better performance in terms of both perception and quantification. In addition, surgeons are invited to score the processing results for different highlight removal methods under realistic reflection conditions. The PatNet received the highest score of 4.18. Correspondingly, the kendall's W is 0.757 and the asymptotic significance= 0.000 < 0.01, revealing that the subjective scores have good consistency and confidence.Generally, the method can realize irregular shape highlight reflection removal and image restoration close to the ground truth of endoscopic images. This method can improve the quality of endoscopic imaging for accurate image analysis.
内镜成像作为一种可视化方法,在微创手术中被广泛应用。然而,由于器官上黏液层的强烈反射,镜面高光常常出现,从而降低成像性能。因此,有必要开发一种有效的内镜成像高光去除方法。本文提出了一种基于部分注意力网络(PatNet)的内镜成像镜面高光去除方法,以减少内镜手术中强光的干扰。该方法设计为两个步骤:高光分割和内镜图像修复。图像分割利用基于光照补偿的亮度阈值,将内镜图像分为高光掩码和非高光区域。图像修复算法采用集成注意力机制的部分卷积网络。设计了一个带有随机跳变点的掩码数据集,用于模拟内镜成像中的镜面高光,以进行网络训练。通过掩码过滤,该方法能够专注于恢复缺陷像素,并尽可能保留有效像素。将PatNet与3种高光分割方法、3种图像修复方法和5种高光去除方法进行比较,以进行有效分析。实验结果表明,所提方法在感知和量化方面均具有更好的性能。此外,邀请外科医生在实际反射条件下对不同高光去除方法的处理结果进行评分。PatNet获得了最高得分4.18。相应地,肯德尔和谐系数W为0.757,渐近显著性=0.000<0.01,表明主观评分具有良好的一致性和可信度。总体而言,该方法能够实现不规则形状高光反射的去除,并实现接近内镜图像真实情况的图像恢复。该方法可以提高内镜成像质量,以进行准确的图像分析。