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Pedestrian Detection and Tracking from Low-Resolution Unmanned Aerial Vehicle Thermal Imagery

机译:低分辨率无人机热像的行人检测与跟踪

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Driven by the prominent thermal signature of humans and following the growing availability of unmanned aerial vehicles (UAVs), more and more research efforts have been focusing on the detection and tracking of pedestrians using thermal infrared images recorded from UAVs. However, pedestrian detection and tracking from the thermal images obtained from UAVs pose many challenges due to the low-resolution of imagery, platform motion, image instability and the relatively small size of the objects. This research tackles these challenges by proposing a pedestrian detection and tracking system. A two-stage blob-based approach is first developed for pedestrian detection. This approach first extracts pedestrian blobs using the regional gradient feature and geometric constraints filtering and then classifies the detected blobs by using a linear Support Vector Machine (SVM) with a hybrid descriptor, which sophisticatedly combines Histogram of Oriented Gradient (HOG) and Discrete Cosine Transform (DCT) features in order to achieve accurate detection. This research further proposes an approach for pedestrian tracking. This approach employs the feature tracker with the update of detected pedestrian location to track pedestrian objects from the registered videos and extracts the motion trajectory data. The proposed detection and tracking approaches have been evaluated by multiple different datasets, and the results illustrate the effectiveness of the proposed methods. This research is expected to significantly benefit many transportation applications, such as the multimodal traffic performance measure, pedestrian behavior study and pedestrian-vehicle crash analysis. Future work will focus on using fused thermal and visual images to further improve the detection efficiency and effectiveness.
机译:在人类杰出的热学特征和无人驾驶飞机(UAV)日益普及的推动下,越来越多的研究工作集中在使用从无人机记录的热红外图像对行人的检测和跟踪上。然而,由于图像分辨率低,平台运动,图像不稳定以及物体尺寸相对较小,从无人机获得的热图像进行行人检测和跟踪提出了许多挑战。这项研究通过提出行人检测和跟踪系统来解决这些挑战。首先开发了一种基于两阶段斑点的方法来进行行人检测。此方法首先使用区域梯度特征和几何约束过滤来提取行人斑点,然后使用带有混合描述符的线性支持向量机(SVM)对检测到的斑点进行分类,该混合描述符将定向梯度直方图(HOG)和离散余弦变换巧妙地结合在一起(DCT)功能以实现精确检测。这项研究进一步提出了一种行人跟踪方法。这种方法将特征跟踪器与检测到的行人位置一起更新,以从注册的视频中跟踪行人对象,并提取运动轨迹数据。所提出的检测和跟踪方法已通过多个不同的数据集进行了评估,结果表明了所提出方法的有效性。预计这项研究将使许多运输应用程序受益匪浅,例如多模式交通绩效评估,行人行为研究和行人车辆碰撞分析。未来的工作将集中在使用融合的热图像和视觉图像上,以进一步提高检测效率和有效性。

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