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Scene Recognition by Joint Learning of DNN from Bag of Visual Words and Convolutional DCT Features

机译:从视觉单词袋和卷积DCT功能的DNN联合学习的场景识别

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摘要

Scene recognition is used in many computer vision and related applications, including information retrieval, robotics, real-time monitoring, and event-classification. Due to the complex nature of the task of scene recognition, it has been greatly improved by deep learning architectures that can be trained by utilizing large and comprehensive datasets. This paper presents a scene classification method in which local and global features are used and are concatenated with the DCT-Convolutional features of AlexNet. The features are fed into AlexNet's fully connected layers for classification. The local and global features are made efficient by selecting the correct size of Bag of Visual Words (BOVW) and feature selection techniques, which are evaluated in the experimentation section. We used AlexNet with the modification of adding additional dense fully connected layers and compared its result with the model previously trained on the Places365 dataset. Our model is also compared with other scene recognition methods, and it clearly outperforms in terms of accuracy.
机译:场景识别用于许多计算机视觉和相关应用程序,包括信息检索,机器人,实时监控和事件分类。由于场景识别任务的复杂性,通过利用大型和全面的数据集可以训练的深度学习架构,它得到了极大的改善。本文提出了一种场景分类方法,其中使用本地和全局功能,并与AlexNet的DCT卷积特征连接。该功能被送入AlexNet的完全连接层以进行分类。通过选择在实验部分中评估的正确尺寸的视觉单词(BOVW)和特征选择技术的正确尺寸来实现本地和全局特征。我们使用AlexNet进行修改添加额外的密集完全连接层,并将其结果与先前在Partht365数据集上培训的模型进行比较。我们的模型也与其他场景识别方法进行了比较,并且在准确性方面明显优于优势。

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