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TRAINING SET EFFECT ON SUPER RESOLUTION FOR AUTOMATED TARGET RECOGNITION

机译:训练集对自动目标识别的超分辨率的影响

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Single Image Super Resolution (SISR) is the process of mapping a low-resolution image to a high-resolution image. This inherently has applications in remote sensing as a way to increase the spatial resolution in satellite imagery. This suggests a possible improvement to automated target recognition in image classification and object detection. We explore the effect that different training sets have on SISR with the network, Super Resolution Generative Adversarial Network (SRGAN). We train 5 SRGANs on different land-use classes (e.g. agriculture, cities, ports) and test them on the same unseen dataset. We attempt to find the qualitative and quantitative differences in SISR, binary classification, and object detection performance. We find that curated training sets that contain objects in the test ontology perform better on both computer vision tasks while having a complex distribution of images allows object detection models to perform better. However, Super Resolution (SR) might not be beneficial to certain problems and will see a diminishing amount of returns for datasets that are closer to being solved.
机译:单图像超分辨率(SISR)是将低分辨率图像映射到高分辨率图像的过程。作为一种提高卫星图像空间分辨率的方法,它固有地在遥感中具有应用。这表明在图像分类和物体检测中对自动目标识别的可能改进。我们使用网络,超分辨率生成对抗网络(SRGAN),探索不同训练集对SISR的影响。我们在不同的土地利用类别(例如农业,城市,港口)上训练了5个SRGAN,并在相同的看不见的数据集上对其进行了测试。我们试图找到SISR,二元分类和目标检测性能的质和量差异。我们发现,在测试本体中包含对象的精选训练集在两种计算机视觉任务上均表现更好,而图像的复杂分布使对象检测模型可以表现得更好。但是,超分辨率(SR)可能对某些问题没有好处,并且将使更易于解决的数据集的收益减少。

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