Endoscopy is the most widely used medical technique for cancer and polyp detection inside hollow organs. However, images acquired by an endoscope are frequently affected by illumination artefacts due to the enlightenment source orientation. There exist two major issues when the endoscope's light source pose suddenly changes: overexposed and underexposed tissue areas are produced. These two scenarios can result in misdiagnosis due to the lack of information in the affected zones or hamper the performance of various computer vision methods (e.g., SLAM, structure from motion, optical flow) used during the non invasive examination. The aim of this work is two-fold: i) to introduce a new synthetically generated data-set generated by a generative adversarial techniques and ii) and to explore both shallow based and deep learning-based image-enhancement methods in overexposed and underexposed lighting conditions. Best quantitative results (i.e., metric based results), were obtained by the deep-learnnig-based LMSPEC method,besides a running time around 7.6 fps)
翻译:内窥镜光源产生突然变化时,存在两大问题:接触过度和接触不足的组织区域;这两种情况可能因受影响地区缺乏信息而导致诊断错误,或妨碍在非侵入性检查期间使用的各种计算机视觉方法(如SLAM、运动结构、光学流)的性能(如运动结构、光学流)的实施。这项工作的目的是双重:(一) 采用由基因对抗技术产生的新的合成数据集和(二) 探索在过度接触和接触不足的照明条件下的浅基和深学习图像增强方法。