Abstract:
Deep learning methods such as convolutional neural networks (CNNs) can deliver highly accurate classification results when provided with large enough data sets and respec...Show MoreMetadata
Abstract:
Deep learning methods such as convolutional neural networks (CNNs) can deliver highly accurate classification results when provided with large enough data sets and respective labels. However, using CNNs along with limited labeled data can be problematic, as this leads to extensive overfitting. In this letter, we propose a novel method by considering a pretrained CNN designed for tackling an entirely different classification problem, namely, the ImageNet challenge, and exploit it to extract an initial set of representations. The derived representations are then transferred into a supervised CNN classifier, along with their class labels, effectively training the system. Through this two-stage framework, we successfully deal with the limited-data problem in an end-to-end processing scheme. Comparative results over the UC Merced Land Use benchmark prove that our method significantly outperforms the previously best stated results, improving the overall accuracy from 83.1% up to 92.4%. Apart from statistical improvements, our method introduces a novel feature fusion algorithm that effectively tackles the large data dimensionality by using a simple and computationally efficient approach.
Published in: IEEE Geoscience and Remote Sensing Letters ( Volume: 13, Issue: 1, January 2016)
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- IEEE Keywords
- Index Terms
- Deep Learning ,
- Pre-trained Network ,
- ImageNet Pre-trained Network ,
- Land Use ,
- Convolutional Neural Network ,
- Feature Fusion ,
- Convolutional Neural Network Classifier ,
- Set Of Representations ,
- Pre-trained Convolutional Neural Network ,
- ImageNet Large Scale Visual Recognition Challenge ,
- Semantic ,
- Training Dataset ,
- Classification Task ,
- Image Classification ,
- Contributions Of This Work ,
- Convolutional Neural Network Model ,
- Aerial Images ,
- Deep Features ,
- Single Vector ,
- Secondary Loss ,
- Convolutional Neural Network Training ,
- Remote Sensing Images ,
- Pre-trained Neural Network ,
- Remote Sensing Data ,
- Shared Weights ,
- Spatial Kernel ,
- Multimedia Data
- Author Keywords
- Author Free Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Deep Learning ,
- Pre-trained Network ,
- ImageNet Pre-trained Network ,
- Land Use ,
- Convolutional Neural Network ,
- Feature Fusion ,
- Convolutional Neural Network Classifier ,
- Set Of Representations ,
- Pre-trained Convolutional Neural Network ,
- ImageNet Large Scale Visual Recognition Challenge ,
- Semantic ,
- Training Dataset ,
- Classification Task ,
- Image Classification ,
- Contributions Of This Work ,
- Convolutional Neural Network Model ,
- Aerial Images ,
- Deep Features ,
- Single Vector ,
- Secondary Loss ,
- Convolutional Neural Network Training ,
- Remote Sensing Images ,
- Pre-trained Neural Network ,
- Remote Sensing Data ,
- Shared Weights ,
- Spatial Kernel ,
- Multimedia Data
- Author Keywords
- Author Free Keywords