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The Effects of Super-Resolution on Object Detection Performance in Satellite Imagery

机译:超分辨率对卫星图像目标检测性能的影响

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We explore the application of super-resolution techniques to satellite imagery, and the effects of these techniques on object detection algorithm performance. Specifically, we enhance satellite imagery beyond its native resolution, and test if we can identify various types of vehicles, planes, and boats with greater accuracy than native resolution. Using the Very Deep Super-Resolution (VDSR) framework and a custom Random Forest Super-Resolution (RFSR) framework we generate enhancement levels of 2x, 4x, and 8x over five distinct resolutions ranging from 30 cm to 4.8 meters. Using both native and super-resolved data, we then train several custom detection models using the SIMRDWN object detection framework. SIMRDWN combines a number of popular object detection algorithms (e.g. SSD, YOLO) into a unified framework that is designed to rapidly detect objects in large satellite images. This approach allows us to quantify the effects of super-resolution techniques on object detection performance across multiple classes and resolutions. We also quantify the performance of object detection as a function of native resolution and object pixel size. For our test set we note that performance degrades from mean average precision (mAP) = 0.53 at 30 cm resolution, down to mAP = 0.11 at 4.8 m resolution. Super-resolving native 30 cm imagery to 15 cm yields the greatest benefit; a 13-36% improvement in mAP. Super-resolution is less beneficial at coarser resolutions, though still provides a small improvement in performance.
机译:我们探索了超分辨率技术在卫星图像上的应用,以及这些技术对目标检测算法性能的影响。具体而言,我们将卫星图像增强到超出其原始分辨率,并测试是否能够以比原始分辨率更高的精度识别各种类型的车辆,飞机和船只。使用超深超分辨率(VDSR)框架和自定义随机森林超分辨率(RFSR)框架,我们可以在30厘米至4.8米的五个不同分辨率下生成2倍,4倍和8倍的增强级别。然后,使用本地和超分辨数据,我们使用SIMRDWN对象检测框架训练几个自定义检测模型。 SIMRDWN将许多流行的对象检测算法(例如SSD,YOLO)组合到一个统一的框架中,该框架旨在快速检测大型卫星图像中的对象。这种方法使我们能够量化超分辨率技术对跨多个类别和分辨率的对象检测性能的影响。我们还将量化对象检测的性能,作为原始分辨率和对象像素大小的函数。对于我们的测试集,我们注意到性能从30 cm分辨率下的平均平均精度(mAP)= 0.53降低到4.8 m分辨率下的mAP = 0.11。将30厘米的原始图像超分辨率到15厘米可产生最大的好处; mAP改善了13-36%。超分辨率在较粗的分辨率下没有太大好处,尽管在性能上仍然有小幅提高。

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