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Changedetection.net: A new change detection benchmark dataset

机译:Changedetection.net:一个新的变更检测基准数据集

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摘要

Change detection is one of the most commonly encountered low-level tasks in computer vision and video processing. A plethora of algorithms have been developed to date, yet no widely accepted, realistic, large-scale video dataset exists for benchmarking different methods. Presented here is a unique change detection benchmark dataset consisting of nearly 90,000 frames in 31 video sequences representing 6 categories selected to cover a wide range of challenges in 2 modalities (color and thermal IR). A distinguishing characteristic of this dataset is that each frame is meticulously annotated for ground-truth foreground, background, and shadow area boundaries — an effort that goes much beyond a simple binary label denoting the presence of change. This enables objective and precise quantitative comparison and ranking of change detection algorithms. This paper presents and discusses various aspects of the new dataset, quantitative performance metrics used, and comparative results for over a dozen previous and new change detection algorithms. The dataset, evaluation tools, and algorithm rankings are available to the public on a website1 and will be updated with feedback from academia and industry in the future.
机译:更改检测是计算机视觉和视频处理中最常见的低级任务之一。迄今为止,已经开发了许多算法,但是还不存在用于基准化不同方法的广泛接受的,现实的大规模视频数据集。这里呈现的是一个独特的变化检测基准数据集,包括31个视频序列中的近90,000帧,代表6个类别,这些类别被选择来涵盖2种模式(色彩和热红外)的广泛挑战。此数据集的一个显着特征是,每帧都针对地面真实的前景,背景和阴影区域边界进行了精心标注-这种工作远远超出了表示变化存在的简单二进制标签。这可以对变化检测算法进行客观,精确的定量比较和排名。本文介绍并讨论了新数据集的各个方面,使用的定量性能指标以及十几种以前和新的变更检测算法的比较结果。数据集,评估工具和算法排名可在 1 网站上向公众公开,并且将来会根据学术界和行业的反馈进行更新。

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