视觉转换器对气象图像识别的评估

Huy Cong Phi, Nam Quy Tran
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引用次数: 0

摘要

本研究将 Vision Transformer 16x16 Words 模型用于天气图像分类。它的性能与其他传统卷积神经网络(CNN)架构,即 EfficientNetB2、DenseNet201、EfficientNetB7 和 MobileNetV2 进行了比较。这些模型都是通过迁移学习技术实现图像分类的。为了确保性能的可比性,它们的模型采用了相同的超参数,如辍学率、优化器和学习率。此外,所有模型都使用了相同的天气图像现象数据集,并使用了相同的天气图像分类训练、验证和测试数据集。这些数据集包含 11 种不同的图像类别,它们是从不同的气象图像资源中收集的,并带有各种气象现象。性能测试结果表明,Vision Transformer 的结果最好,达到了 86.20%,适合用于评估天气图像分类问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVALUATION OF VISION TRANSFORMER ON WEATHER IMAGE RECOGNITION
This study implements Vision Transformer 16x16 Words model for weather images classification. Its performance is compared with other traditional convolutional neural network (CNN) architectures, namely EfficientNetB2, DenseNet201, EfficientNetB7 and MobileNetV2. These models are implemented by transfer learning techniques for classification of images. In order to ensure the comparative performance, the same hyper-parameters of their models, such as dropout rate, optimizer and learning rate are employed identically. Furthermore, the same dataset on weather image phenomena applied on all those models with the same training, validation and testing dataset of weather images classification. The dataset of 11 different image classes that are collected from different resources of weather images with various kinds of weather phenomena are employed. The test results of performance show that the Vision Transformer gives the best results at 86.20%, which is suitable for application in evaluating weather images classification problem.
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