IEEE Trans Image Process. 2016 Nov;25(11):5304-15. doi: 10.1109/TIP.2016.2601265. Epub 2016 Aug 18.
To enrich large-scale visual analytics applications enabled by aerial wide area motion imagery (WAMI), we propose a novel methodology for accurately registering a geo-referenced vector roadmap to WAMI by using the locations of detected vehicles and determining a parametric transform that aligns these locations with the network of roads in the roadmap. Specifically, the problem is formulated in a probabilistic framework, explicitly allowing for spurious detections that do not correspond to on-road vehicles. The registration is estimated via the expectation-maximization (EM) algorithm as the planar homography that minimizes the sum of weighted squared distances between the homography-mapped detection locations and the corresponding closest point on the road network, where the weights are estimated posterior probabilities of detections being on-road vehicles. The weighted distance minimization is efficiently performed using the distance transform with the Levenberg-Marquardt nonlinear least-squares minimization procedure, and the fraction of spurious detections is estimated within the EM framework. The proposed method effectively sidesteps the challenges of feature correspondence estimation, applies directly to different imaging modalities, is robust to spurious detections, and is also more appropriate than feature matching for a planar homography. Results over three WAMI data sets captured by both visual and infrared sensors indicate the effectiveness of the proposed methodology: both visual comparison and numerical metrics for the registration accuracy are significantly better for the proposed method as compared with the existing alternatives.
为了丰富基于航空宽幅运动图像(WAMI)的大规模视觉分析应用,我们提出了一种新颖的方法,通过使用检测到的车辆的位置并确定一个参数变换来将地理参考的矢量路线图准确地注册到 WAMI 中,该变换将这些位置与路线图中的道路网络对齐。具体来说,该问题是在概率框架中公式化的,明确允许存在与道路上的车辆不对应的虚假检测。注册通过期望最大化(EM)算法估计为平面单应性,该平面单应性使映射检测位置与道路网络上的对应最近点之间的加权平方距离之和最小化,其中权重是检测到的车辆在道路上的后验概率估计。加权距离最小化是通过距离变换和 Levenberg-Marquardt 非线性最小二乘最小化过程有效地执行的,并且在 EM 框架内估计了虚假检测的分数。所提出的方法有效地回避了特征对应估计的挑战,直接适用于不同的成像模式,对虚假检测具有鲁棒性,并且对于平面单应性比特征匹配更合适。使用视觉和红外传感器捕获的三个 WAMI 数据集的结果表明了所提出方法的有效性:与现有替代方法相比,所提出的方法的注册准确性的视觉比较和数值指标都有显著提高。