利用深度学习在社交媒体图像中识别军用车辆

Tuomo Hiippala
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引用次数: 7

摘要

本文介绍了一个使用机器学习识别社交媒体图像中的军用车辆的系统。为此,该系统借鉴了将深度神经网络应用于计算机视觉任务的最新进展,同时也广泛使用了公开可用的库、模型和数据。通过三个类训练车辆识别系统,本文报告了两个实验,使用不同的架构和策略来克服使用有限训练数据的挑战:数据增强和迁移学习。结果表明,迁移学习优于数据增强,使用10倍交叉验证达到95.18%的平均准确率,同时在由社交媒体内容组成的单独测试集上也能很好地泛化。
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Recognizing military vehicles in social media images using deep learning
This paper presents a system that uses machine learning to recognize military vehicles in social media images. To do so, the system draws on recent advances in applying deep neural networks to computer vision tasks, while also making extensive use of openly available libraries, models and data. Training a vehicle recognition system over three classes, the paper reports on two experiments that use different architectures and strategies to overcome the challenges of working with limited training data: data augmentation and transfer learning. The results show that transfer learning outperforms data augmentation, achieving an average accuracy of 95.18% using 10-fold cross-validation, while also generalizing well on a separate testing set consisting of social media content.
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