In this work, we compare the detection accuracy and speed of several state-of-the-art models for the task of detecting oil and gas fracking wells and small cars in commercial electro-optical satellite imagery. Several models are studied from the single-stage, two-stage, and multi-stage object detection families of techniques. For the detection of fracking well pads (50m - 250m), we find single-stage detectors provide superior prediction speed while also matching detection performance of their two and multi-stage counterparts. However, for detecting small cars, two-stage and multi-stage models provide substantially higher accuracies at the cost of some speed. We also measure timing results of the sliding window object detection algorithm to provide a baseline for comparison. Some of these models have been incorporated into the Lockheed Martin Globally-Scalable Automated Target Recognition (GATR) framework.
翻译:在这项工作中,我们比较了商业电子光学卫星图像中用于探测油气裂口井和小汽车的若干最先进的模型的探测准确性和速度;从单阶段、两阶段和多阶段天体探测技术系列中研究了若干模型;为探测裂缝井垫(50米至250米),我们发现单阶段探测器提供较高的预测速度,同时匹配两阶段和多阶段对口机的探测性能;然而,为探测小汽车,两阶段和多阶段模型以某种速度提供高得多的孔隙;我们还测量滑动窗口天体探测算法的时间结果,以提供一个比较基线;其中一些模型已经纳入洛克希德·马丁全球可扩缩自动目标识别框架。