Abstract

Learning powerful feature representations for image retrieval has always been a challenging task in the field of remote sensing. Traditional methods focus on extracting low-level hand-crafted features which are not only time-consuming but also tend to achieve unsatisfactory performance due to the complexity of remote sensing images. In this paper, we investigate how to extract deep feature representations based on convolutional neural networks (CNNs) for high-resolution remote sensing image retrieval (HRRSIR). To this end, several effective schemes are proposed to generate powerful feature representations for HRRSIR. In the first scheme, a CNN pre-trained on a different problem is treated as a feature extractor since there are no sufficiently-sized remote sensing datasets to train a CNN from scratch. In the second scheme, we investigate learning features that are specific to our problem by first fine-tuning the pre-trained CNN on a remote sensing dataset and then proposing a novel CNN architecture based on convolutional layers and a three-layer perceptron. The novel CNN has fewer parameters than the pre-trained and fine-tuned CNNs and can learn low dimensional features from limited labelled images. The schemes are evaluated on several challenging, publicly available datasets. The results indicate that the proposed schemes, particularly the novel CNN, achieve state-of-the-art performance.

Highlights

  • With the rapid development of remote sensing sensors over the past few decades, a considerable volume of high-resolution remote sensing images are available

  • For the UCMD dataset, the best result is obtained by using the Fc2 features of VGGM, which achieves an average normalized modified retrieval rank (ANMRR) value that is about 12% lower and a mean average precision (mAP) value that is about 14% higher than that of the worst result which is achieved by VGGM128_Fc2

  • For the RSD dataset, the best result is obtained by using the Fc2 features of CaffeRef, which achieves an ANMRR value that is about 18% lower and a mAP value that is about

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Summary

Introduction

With the rapid development of remote sensing sensors over the past few decades, a considerable volume of high-resolution remote sensing images are available. Efficiently organizing and managing the huge volume of remote sensing data remains a great challenge in the remote sensing community. High-resolution remote sensing image retrieval (HRRSIR), which aims to retrieve and return images of interest from a large database, is an effective and indispensable method for the management of the large amount of remote sensing data. An integrated HRRSIR system roughly includes two components, feature extraction and similarity measure, and both play an important role in a successful system. Feature extraction focuses on the generation of powerful feature representations for the images, while similarity measure focuses on feature matching to determine the similarity between the query image and other images in the database

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