Indian Movie Face Database: A benchmark for face recognition under wide variations

S. Setty, M. Husain, Parisa Beham, Jyothi Gudavalli, Menaka Kandasamy, R. Vaddi, V. Hemadri, J C Karure, Raja Raju, B. Rajan, Vijay Kumar, C V Jawahar
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引用次数: 88

Abstract

Recognizing human faces in the wild is emerging as a critically important, and technically challenging computer vision problem. With a few notable exceptions, most previous works in the last several decades have focused on recognizing faces captured in a laboratory setting. However, with the introduction of databases such as LFW and Pubfigs, face recognition community is gradually shifting its focus on much more challenging unconstrained settings. Since its introduction, LFW verification benchmark is getting a lot of attention with various researchers contributing towards state-of-the-results. To further boost the unconstrained face recognition research, we introduce a more challenging Indian Movie Face Database (IMFDB) that has much more variability compared to LFW and Pubfigs. The database consists of 34512 faces of 100 known actors collected from approximately 103 Indian movies. Unlike LFW and Pubfigs which used face detectors to automatically detect the faces from the web collection, faces in IMFDB are detected manually from all the movies. Manual selection of faces from movies resulted in high degree of variability (in scale, pose, expression, illumination, age, occlusion, makeup) which one could ever see in natural world. IMFDB is the first face database that provides a detailed annotation in terms of age, pose, gender, expression, amount of occlusion, for each face which may help other face related applications.
印度电影人脸数据库:广泛变化下的人脸识别基准
在野外识别人脸正在成为一个极其重要的、技术上具有挑战性的计算机视觉问题。除了少数值得注意的例外,在过去的几十年里,大多数先前的工作都集中在识别在实验室环境中捕捉到的人脸。然而,随着LFW和Pubfigs等数据库的引入,人脸识别社区正逐渐将重点转向更具挑战性的无约束环境。自引入以来,LFW验证基准得到了许多研究人员的关注,他们对状态-结果做出了贡献。为了进一步推动无约束人脸识别研究,我们引入了一个更具挑战性的印度电影人脸数据库(IMFDB),与LFW和Pubfigs相比,它具有更多的可变性。该数据库包括从大约103部印度电影中收集的100位已知演员的34512张脸。与LFW和Pubfigs使用人脸检测器自动从网络集合中检测人脸不同,IMFDB中的人脸是从所有电影中手动检测的。从电影中手动选择人脸导致了高度的可变性(在规模,姿势,表情,照明,年龄,遮挡,化妆),这在自然界中是可以看到的。IMFDB是第一个为每张脸提供年龄、姿势、性别、表情、遮挡量等详细注释的人脸数据库,这可能有助于其他与人脸相关的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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