2020 Sequestered Data Evaluation for Known Activities in Extended Video: Summary and Results

A. Godil, Yooyoung Lee, J. Fiscus, Andrew Delgado, Eliot Godard, Baptiste Chocot, Lukas L. Diduch, Jim Golden, Jesse Zhang
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Abstract

This paper presents a summary and results for the ActEV’20 SDL (Activities in Extended Video Sequestered Data Leaderboard) challenge that was held under the CVPR’20 ActivityNet workshop [38]. The primary goal of the challenge was to provide an impetus for advancing research and capabilities in the field of human activity detection in untrimmed multi-camera videos. Advancements in activity detection will help with a wide range of public safety applications. The challenge was administered by the National Institute of Standards and Technology (NIST), where anyone could submit their system which run on sequestered data with the resulting score posted to a public leaderboard. Ten teams submitted their systems for the ActEV’20 SDL competition on the Multiview Extended Video with Activities (MEVA) test set with 37 target activities. The performance metric for the leaderboard ranking is the partial, normalized Area Under the Detection Error Tradeoff (DET) curve (nAUDC). The top rank on activity detection was by UCF at 37%, followed by CMU at 39% and OPPO at 41%.
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扩展视频中已知活动的隔离数据评估:总结和结果
本文介绍了在CVPR ' 20 ActivityNet研讨会下举行的ActEV ' 20 SDL(扩展视频隔离数据排行榜中的活动)挑战的总结和结果[38]。挑战赛的主要目标是推动在未经修剪的多摄像头视频中检测人类活动领域的研究和能力。活动检测的进步将有助于广泛的公共安全应用。这项挑战由美国国家标准与技术研究所(NIST)管理,任何人都可以提交他们的系统,该系统运行在隔离的数据上,并将结果分数发布到公共排行榜上。有10个团队提交了他们的系统,参加ActEV ' 20 SDL竞赛,参加包含37个目标活动的多视图扩展视频(MEVA)测试集。排行榜排名的性能指标是检测错误权衡(DET)曲线下的部分标准化区域(nAUDC)。活动检测排名第一的是UCF(37%),其次是CMU(39%)和OPPO(41%)。
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