Sheng, KekaiDong, WeimingKong, YanMei, XingLi, JilinWang, ChengjieHuang, FeiyueHu, Bao-GangStam, Jos and Mitra, Niloy J. and Xu, Kun2015-10-072015-10-072015https://doi.org/10.1111/cgf.12760The study of face alignment has been an area of intense research in computer vision, with its achievements widely used in computer graphics applications. The performance of various face alignment methods is often imagedependent or somewhat random because of their own strategy. This study aims to develop a method that can select an input image with good face alignment results from many results produced by a single method or multiple ones. The task is challenging because different face alignment results need to be evaluated without any ground truth. This study addresses this problem by designing a feasible feature extraction scheme to measure the quality of face alignment results. The feature is then used in various machine learning algorithms to rank different face alignment results. Our experiments show that our method is promising for ranking face alignment results and is able to pick good face alignment results, which can enhance the overall performance of a face alignment method with a random strategy. We demonstrate the usefulness of our ranking-enhanced face alignment algorithm in two practical applications: face cartoon stylization and digital face makeup.I.3.3 [Computer Graphics]Picture/Image GenerationEvaluating the Quality of Face Alignment without Ground Truth10.1111/cgf.12760213-223