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Convolutional Neural Networks and Transfer Learning Based Classification of Natural Landscape Images

机译:基于卷积神经网络与自然景观图像的转移学习分类

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摘要

Natural landscape image classification is a difficult problem in computer vision. Many classes that can be found in such images are often ambiguous and can easily be confused with each other (e.g. smoke and fog), and not just by a computer algorithm, but by a human as well. Since natural landscape video surveillance became relatively pervasive in recent years, in this paper we focus on the classification of natural landscape images taken mostly from forest fire monitoring towers. Since these images usually suffer from the lack of the usual low and middle level features (e.g. sharp edges and corners), and since their quality is degraded by atmospheric conditions, this makes the already difficult problem of natural landscape classification even more challenging. In this paper we tackle the problem of automatic natural landscape classification by proposing and evaluating a classifier based on a pretrained deep convolutional neural network and transfer learning.
机译:自然景观图像分类是计算机视觉中的难题。 许多可以在这样的图像中找到的课程通常是暧昧的,并且很容易彼此混淆(例如烟雾和雾),而不仅仅是通过计算机算法,而是由人类也是如此。 由于近年来,自然景观视频监控变得相对普遍普遍,因此在本文中,我们专注于自然风景图像的分类,主要来自森林火灾监测塔。 由于这些图像通常缺乏通常的低和中级特征(例如尖锐的边缘和角落),并且由于它们的质量因大气条件而降低,这使得自然景观分类的难题变得更具挑战性。 本文通过提出基于普拉特深度卷积神经网络和转移学习,通过提出和评估分类器来解决自动自然景观分类问题。

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