Real-time face tracking under long-term full occlusions

Martin Soldic, Darijan Marcetic, Marijo Maracic, Darko Mihalić, S. Ribaric
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引用次数: 6

Abstract

The identified weaknesses of most of state-of-the-art trackers are inability to cope with long-term full occlusions, abrupt motion, detecting and tracking a reappeared target. In this paper, we present a robust real-time single face tracking system with several new key features: semi-automatic target tracking initialization based on a robust face detector, an effective target loss estimation based on a response of a position correlation filter, a candidate image patch selection for re-initialization supported with a short- and long-term memories (STM and LTM). These memories are used for tracking re-initialization during online learning procedure. The STM is used to select an image patch as candidate for re-tracking based on stored position correlation filters (from current frame) in case of short-term full occlusions, while the LTM stores aggregated position correlation filters (online learned) is used to recover the tracker from long-term full occlusions. Validation of the tracking system was performed by evaluation on a subset of videos from Online Tracking Benchmark (OTB) dataset and our own video.
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长期全遮挡下的实时人脸跟踪
大多数最先进的跟踪器的弱点是无法应对长期的完全闭塞,突然运动,检测和跟踪重新出现的目标。在本文中,我们提出了一个鲁棒实时单面跟踪系统,该系统具有几个新的关键特征:基于鲁棒人脸检测器的半自动目标跟踪初始化,基于位置相关滤波器响应的有效目标损失估计,支持短期和长期记忆(STM和LTM)的候选图像补丁选择用于重新初始化。这些存储器用于在线学习过程中跟踪重新初始化。STM用于在短期完全遮挡的情况下,基于存储的位置相关滤波器(来自当前帧)选择图像补丁作为重新跟踪的候选,而LTM用于存储聚合的位置相关滤波器(在线学习),用于从长期完全遮挡中恢复跟踪器。通过对在线跟踪基准(OTB)数据集和我们自己的视频的视频子集进行评估来验证跟踪系统。
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