基于预训练CNN分类器的SAR图像单目标自动标注算法

Moulay Idriss Bellil, Xiaojian Xu
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摘要

卷积神经网络(cnn)是抽象深度学习算法的重要组成部分,尤其是在合成孔径雷达(SAR)图像的视觉解释中。一项正在进行的研究正在进行,以提高他们的准确性,忘记未被发现的内部。cnn通常被用作黑盒子,以非线性的方式产生抽象的解释。然而,在本文中,我们提出了一种新的算法,该算法显示cnn在图像中寻找的位置,以提供适用于SAR图像的分类问题的答案。我们还提供了仅使用预训练的分类网络和一些后处理作为边界框的结果。该算法使用了一种暴力方法,给出了一个预训练的神经网络,它逐渐去除像素线并检查对结果分数的影响,并对结果分数进行后处理,以推断给定输入图像中最重要的区域。尽管文献中已经有其他尝试通过反转卷积映射过滤器来提供解决问题的方法,但它们的范围有限,通常无法处理复杂的网络,如获奖的Resnet。我们的算法在这一类别中具有重要的实用性,它弥合了目标分类和目标检测问题之间的差距,为消除手动对象标注的耗时任务开辟了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Single Target Auto-annotation Algorithm for SAR Images Based on Pre-trained CNN Classifier
Convolutional neural networks (CNNs) are extremely important building blocks for abstract deep learning algorithm constructs regarding visual interpretation especially when it comes to synthetic aperture radar (SAR) images. An ongoing research is being made in order to improve their accuracy forgetting about the undiscovered internals. CNNs are usually being used as black boxes that produce in a non-linear fashion abstract interpretations. In this paper, however, we propose a novel algorithm that shows where CNNs look in an image to provide the answer to the provided classification problem applied to SAR images. We provide also results as bounding boxes using only a pre-trained classification network and some post-processing. The algorithm uses a brute-force approach given a pre-trained neural network, it removes gradually lines of pixels and checks the effect on the resulting scores, and it post-processes the resulting scores to infer the most important region in a given input image. Although other attempts have been made in the literature to provide solutions to the problem, by reversing the convolutional map filters, they are limited in scope and generally fail to deal with a complex network such as the award winning Resnet. Our algorithm, in this category, is of significant usefulness, it bridges the gap between the object classification and object detection problems, opening new perspectives to eliminate the time-consuming task of manual object annotation.
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