MobileNetV2 Model for Image Classification

Ke Dong, Chengjie Zhou, Yihan Ruan, Yuzhi Li
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引用次数: 50

Abstract

Machine learning has been increasingly prevailing all over the world, especially in the computer vision field. This paper mainly focused on the performance of MobileNetV2 model for image classification. To verify the advanced performance of MobileNetV2 model better, this paper adopted MobileNetVl model as the control group and introduced an experiment of identifying images in a variety of datasets extracted from TensorFlow. With the T-SNE visualization tool, the conclusion can be generated by comparing the accuracy and effectiveness of these two models. The experimental results demonstrated that the proficiency of MobileNetV2 model achieved higher accuracy rates compared to MobileNetVl model. In order to enhance the performance of MobileNetV2, extensive experiments are performed.
MobileNetV2图像分类模型
机器学习在世界范围内越来越流行,特别是在计算机视觉领域。本文主要研究了MobileNetV2模型在图像分类中的性能。为了更好地验证MobileNetV2模型的先进性能,本文以MobileNetV2模型为对照组,进行了从TensorFlow中提取的多种数据集的图像识别实验。利用T-SNE可视化工具,通过比较两种模型的准确性和有效性得出结论。实验结果表明,与mobilenetv1模型相比,MobileNetV2模型的熟练度达到了更高的准确率。为了提高MobileNetV2的性能,进行了大量的实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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