Benchmarking Facial Image Analysis Technologies (BeFIT)

H. K. Ekenel
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引用次数: 10

Abstract

Summary form only given. In the past several decades, facial image analysis has attracted continuous attention in computer vision, pattern recognition and machine learning areas, owing to its scientific challenges in both psychological interpretation and computational simulation, as well as its huge potential in real-world applications. Much progress has been achieved in the last two decades; however, researchers in the field also meet bafflement and challenges on the comprehensive and unbiased evaluation of the related technologies, which may prevent them from discovering the actual state of the art. BeFIT - Benchmarking Facial Image Analysis Technologies- is an international collaborative effort on standardizing the evaluation of facial image analysis technologies. The objective is to bring together different face analysis evaluations and provide a medium for researchers to discuss about different aspects of face analysis. This interaction would also lead to new datasets or combination of existing datasets. The BeFIT webpage (URL: http://face.cs.kit.edu/befit) is planned to serve as a repository of facial image analysis technologies benchmarks and the regular workshops are intended to serve as a medium where the researchers can discuss about different aspects of face analysis. In this talk, the Benchmarking Facial Image Analysis Technologies -BeFIT initiative will be introduced and an overview of the proposed challenges, benchmarks, and the provided data sets within the BeFIT framework will be presented.
基准面部图像分析技术(BeFIT)
只提供摘要形式。在过去的几十年里,面部图像分析由于其在心理解释和计算模拟方面的科学挑战以及在现实世界中的巨大应用潜力,在计算机视觉、模式识别和机器学习领域不断受到关注。在过去二十年中取得了很大进展;然而,该领域的研究人员在对相关技术进行全面、公正的评价方面也遇到了困惑和挑战,这可能会阻碍他们发现技术的实际状况。BeFIT -基准面部图像分析技术-是一个标准化评估面部图像分析技术的国际合作努力。目的是汇集不同的面部分析评估,并为研究人员提供一个媒介来讨论面部分析的不同方面。这种交互还会产生新的数据集或现有数据集的组合。BeFIT网页(网址:http://face.cs.kit.edu/befit)计划作为面部图像分析技术基准的存储库,定期研讨会旨在作为研究人员讨论面部分析不同方面的媒介。在本次演讲中,将介绍基准面部图像分析技术-BeFIT计划,并概述BeFIT框架内提出的挑战,基准和提供的数据集。
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