A Comparison of Deep Learning Object Detection Models for Satellite Imagery

A. Groener, Gary Chern, M. D. Pritt
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引用次数: 13

Abstract

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 electrooptical 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.
卫星图像中深度学习目标检测模型的比较
在这项工作中,我们比较了几种最先进的模型在商业光电卫星图像中检测油气压裂井和小型汽车的精度和速度。从单阶段、两阶段和多阶段目标检测技术中研究了几种模型。对于压裂井台(50m- 250m)的检测,我们发现单级检测器提供了更高的预测速度,同时也可以匹配两级和多级检测器的检测性能。然而,对于小型汽车的检测,两阶段和多级模型提供了更高的精度,但代价是一定的速度。我们还测量了滑动窗口目标检测算法的时序结果,为比较提供了基线。其中一些模型已被纳入洛克希德·马丁公司全球可扩展自动目标识别(GATR)框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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