面向拥挤视频监控场景的长期人脸跟踪

Germán Barquero, Carles Fernández Tena, I. Hupont
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引用次数: 3

摘要

目前大多数多目标跟踪器专注于短期跟踪,并且基于深度和复杂的系统,这些系统不能实时运行,这通常使它们无法用于视频监控。在本文中,我们提出了一种长期的多人脸跟踪架构,用于在拥挤的环境中工作,特别是在运动和遮挡方面不受约束,并且人脸通常是人的唯一可见部分的情况下。我们的系统受益于人脸检测和人脸识别领域的进步,以实现长期跟踪。它采用了一种基于检测的跟踪方法,将快速的短期视觉跟踪器与基于人脸验证的新颖在线跟踪器重连策略相结合。此外,还包括一个校正模块,以纠正过去的轨道分配,而不需要额外的计算成本。我们介绍了一系列实验,介绍了用于评估长期跟踪能力的新颖,专门的指标和我们公开发布的视频数据集。研究结果表明,在这种情况下,我们的方法可以获得比最先进的深度学习跟踪器长50%的轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-Term Face Tracking for Crowded Video-Surveillance Scenarios
Most current multi-object trackers focus on short-term tracking, and are based on deep and complex systems that do not operate in real-time, often making them impractical for video-surveillance. In this paper, we present a longterm multi-face tracking architecture conceived for working in crowded contexts, particularly unconstrained in terms of movement and occlusions, and where the face is often the only visible part of the person. Our system benefits from advances in the fields of face detection and face recognition to achieve long-term tracking. It follows a tracking-by-detection approach, combining a fast short-term visual tracker with a novel online tracklet reconnection strategy grounded on face verification. Additionally, a correction module is included to correct past track assignments with no extra computational cost. We present a series of experiments introducing novel, specialized metrics for the evaluation of long-term tracking capabilities and a video dataset that we publicly release. Findings demonstrate that, in this context, our approach allows to obtain up to 50% longer tracks than state-of-the-art deep learning trackers.
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