Dealing with incomplete information is a well studied problem in the context of machine learning and computational intelligence. However, in the context of computer vision, the problem has only been studied in specific scenarios (e.g., certain types of occlusions in specific types of images), although it is common to have incomplete information in visual data. This chapter describes the design of an academic competition focusing on inpainting of images and video sequences that was part of the competition program of WCCI2018 and had a satellite event collocated with ECCV2018. The ChaLearn Looking at People Inpainting Challenge aimed at advancing the state of the art on visual inpainting by promoting the development of methods for recovering missing and occluded information from images and video. Three tracks were proposed in which visual inpainting might be helpful but still challenging: human body pose estimation, text overlays removal and fingerprint denoising. This chapter describes the design of the challenge, which includes the release of three novel datasets, and the description of evaluation metrics, baselines and evaluation protocol. The results of the challenge are analyzed and discussed in detail and conclusions derived from this event are outlined.
翻译:在机器学习和计算情报方面,处理不完全的信息是一个研究周全的问题,然而,在计算机视觉方面,这个问题只在特定情况下研究过(例如,特定类型图像中某些类型的分离),尽管视觉数据中的信息不完全是常见的。本章描述学术竞赛的设计,重点是绘制作为WCCI2018竞争方案一部分的图像和视频序列,并有与ECCV2018合用的一个卫星活动。ChaLearn " 观察人们油漆挑战 " 旨在通过促进制定从图像和视频中恢复缺失和隐蔽信息的方法来提高视觉油漆的艺术水平。提出了三种途径,其中视觉油漆可能有用,但仍然具有挑战性:人体构成估计、文字覆盖去除和指纹去除。本章描述了挑战的设计,其中包括发布三个新的数据集,以及描述评价指标、基线和评价程序。对挑战的结果进行了详细分析和讨论,并从这一活动中得出结论。