基于Resnet-15的深度学习神经网络静态图像天气识别

Peace Uloma Egbueze, Z. Wang
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引用次数: 0

摘要

从静止图像中识别天气状况是相当具有挑战性的,因为天气多样性和缺乏许多天气条件中存在的明显特征。一些研究人员已经使用k近邻方法来识别天气条件的特定提取,以测试识别任务的效率。其他工作试图解决这个问题,将天气识别视为一个单一的标识符任务。为了提高天气条件识别的准确性,本研究采用Resnet-15模型的卷积层方法提取图像的基本特征。然后,使用全连接层和softmax分类器对图像进行识别和分类,使用来自不同场景的小尺寸图像数据集dataset-2。采用Resnet-15模型对数据集-2进行测试和训练。实验表明,该方法能够正确识别图像的天气条件,具有更好的准确性、速度和网络模型尺寸的减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weather Recognition Based on Still Images Using Deep Learning Neural Network with Resnet-15
The recognition of weather condition from still images is quite challenging due to weather diversity and lack of distinct characteristics that exists in many weather conditions. Some researchers have used the K-nearest neighbor method to recognise a specific extract of a weather condition, to test the efficiency of the recognition task. Other works attempted to resolve this problem viewed weather recognition as a single identifier task. In order to enhance the accuracy of recognising weather conditions, this research uses the approach of convolutional layers of Resnet-15 model to extract the essential features of an image. Thereafter, uses the fully connected layers and the softmax classifier to recognise and classify the images, a small size dataset of images from diverse scenes called dataset-2, is used. And Resnet-15 model is used for the testing and training on the datadet-2. The experiments of the proposed approach have been able to correctly recognise the weather conditions of the images, with a better accuracy, speed and reduction in the model size of the network.
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