Improved Detection for WAMI using Background Contextual Information

Elena M. Vella, Anee Azim, H. Gaetjens, Boris Repasky, Timothy Payne
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引用次数: 3

Abstract

Current vehicle detection and tracking in imagery characterised by large ground coverage, low resolution and low frame rate data, such as Wide Area Motion Imagery (WAMI), does not reliably sustain vehicle tracks through start-stop movement profiles. This limits the continuity of tracks and its usefulness in higher level analysis such as pattern of behaviour or activity analysis. We develop and implement a two-step registration method to create well-registered images which are used to generate a novel low-noise representation of the static background context which is fed into our Context Convolutional Neural Network (C-CNN) detector. This network is unique as the C-CCN learns changing features in the scene and thus produces reliable, sustained vehicle detection independent of motion. A quantitative evaluation against WAMI imagery is presented for a Region of Interest (ROI) of the WPAFB 2009 annotated dataset [1]. We apply a Kalman filter tracker with WAMI-specific adaptions to the single frame C-CNN detections, and evaluate the results with respect to the tracking ground truth. We show improved detection and sustained tracking in WAMI using static background contextual information and reliably detect all vehicles that move, including vehicles that become stationary for short periods of time as they move through stop-start manoeuvres.
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利用背景上下文信息改进WAMI检测
目前的车辆检测和跟踪图像的特点是大范围的地面覆盖,低分辨率和低帧率数据,如广域运动图像(WAMI),不能可靠地通过启停运动轮廓来维持车辆轨迹。这限制了轨迹的连续性及其在高级分析(如行为模式或活动分析)中的有用性。我们开发并实现了一种两步配准方法来创建良好配准的图像,这些图像用于生成静态背景上下文的新型低噪声表示,并将其馈送到我们的上下文卷积神经网络(C-CNN)检测器中。该网络的独特之处在于,C-CCN学习了场景中不断变化的特征,从而产生了独立于运动的可靠、持续的车辆检测。针对WPAFB 2009注释数据集的感兴趣区域(ROI),提出了针对WAMI图像的定量评估[1]。我们将具有wami特定适应性的卡尔曼滤波跟踪器应用于单帧C-CNN检测,并根据跟踪地真值对结果进行评估。我们展示了在WAMI中使用静态背景上下文信息改进的检测和持续跟踪,并可靠地检测所有移动的车辆,包括在停止-启动操作中短暂静止的车辆。
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