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Investigating Gait Recognition in the Short-Wave Infrared (SWIR) Spectrum: Dataset and Challenges

机译:在短波红外(SWIR)光谱中研究步态识别:数据集和挑战

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In the biometrics community, challenge datasets are often released to determine the robustness of state-of-the-art algorithms to conditions that can confound recognition accuracy. In the context of automated human gait recognition, evaluation has predominantly been conducted on video data acquired in the active visible spectral band, although recent literature has explored recognition in the passive thermal band. The advent of sophisticated sensors has piqued interest in performing gait recognition in other spectral bands such as short-wave infrared (SWIR), due to their use in military-based tactical applications and the possibility of operating in nighttime environments. Further, in many operational scenarios, the environmental variables are not controlled, thereby posing several challenges to traditional recognition schemes. In this work, we discuss the possibility of performing gait recognition in the SWIR spectrum by first assembling a dataset, referred to as the WVU Outdoor SWIR Gait (WOSG) Dataset, and then evaluate the performance of three gait recognition algorithms on the dataset. The dataset consists of 155 subjects and represents gait information acquired under multiple walking paths in an uncontrolled, outdoor environment. Detailed experimental analysis suggests the benefits of distributing this new challenging dataset to the broader research community. In particular, the following observations were made: (a) the importance of SWIR imagery in acquiring data covertly for surveillance applications; (b) the difficulty in extracting human silhouettes in low-contrast SWIR imagery; (c) the impact of silhouette quality on overall recognition accuracy; (d) the possibility of matching gait sequences pertaining to different walking trajectories; and (e) the need for developing sophisticated gait recognition algorithms to handle data acquired in unconstrained environments.
机译:在生物识别社区中,通常会发布挑战数据集,以确定最新算法对可能混淆识别准确性的条件的鲁棒性。在自动步态识别的背景下,尽管最近的文献已经探索了在被动热频带中的识别,但是主要对主动可见光谱带中的视频数据进行了评估。先进的传感器的出现引起了人们对在其他光谱带(例如短波红外(SWIR))中进行步态识别的兴趣,这是由于它们在基于军事的战术应用中的使用以及在夜间环境中进行操作的可能性。此外,在许多操作场景中,环境变量不受控制,从而对传统识别方案提出了一些挑战。在这项工作中,我们讨论通过首先组装一个称为WVU户外SWIR步态(WOSG)数据集的数据集,然后评估该数据集上三种步态识别算法的性能,来在SWIR光谱中进行步态识别的可能性。该数据集由155个对象组成,代表在不受控制的室外环境下通过多条步行路径获取的步态信息。详细的实验分析表明,将这一具有挑战性的新数据集分发给更广泛的研究社区的好处。特别是,提出了以下意见:(a)SWIR图像在秘密收集监视应用数据中的重要性; (b)在低对比度SWIR图像中提取人像的困难; (c)轮廓质量对整体识别精度的影响; (d)是否有可能使与不同步行轨迹有关的步态顺序相匹配; (e)需要开发复杂的步态识别算法来处理在不受限制的环境中获取的数据。

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