用于军事工业目标检测的超分辨率图像采集

Mehmet Batuhan Özdaş, Fatih Uysal, F. Hardalaç
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引用次数: 0

摘要

自动目标检测在军事工业中具有重要意义。由于这些物体很小,而且被伪装了,也就是说,它们不清晰,所以它们看起来清晰而大就变得更加重要了。因此,为了方便军事工业领域的目标检测算法,我们提出了一种从低分辨率、低维图像中获得高分辨率、高维图像的模型。该模型是将快速超分辨率卷积神经网络与文献中广泛使用的VGG16模型相结合的模型。由于军事工业领域的数据有限,数据集是人工从互联网上收集的。我们的数据集总共有900张图像,已经用某些数据增强技术进行了复制。在模型训练中,采用双三次插值方法从采集到的高维图像中获得低维图像。模型训练后,BRISQUE评分为47.81。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Super Resolution Image Acquisition for Object Detection in the Military Industry
Automatic object detection is important in the military industry. Since these objects are small and camouflaged, that is, they are not clear, it becomes even more important that they appear clear and large. Therefore, in order to facilitate object detection algorithms in the field of the military industry, we present a model that obtains high-resolution and high-dimensional images from low-resolution and low-dimensional images. The presented model is a combination of fast super-resolution convolutional neural networks and the VGG16 model, which is widely used in the literature. Due to the limited data in the field of the military industry, the dataset was collected manually from the internet. Our dataset, which has 900 images in total, has been reproduced with certain data augmentation techniques. For model training, low-dimensional images were obtained from the collected high-dimensional images by the bicubic interpolation method. After model training, a BRISQUE score of 47.81 was obtained.
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