Abstract

Recently, hashing-based large-scale remote sensing (RS) image retrieval has attracted much attention. Many new hashing algorithms have been developed and successfully applied to fast RS image retrieval tasks. However, there exists an important problem rarely addressed in the research literature of RS image hashing. The RS images are practically produced in a streaming manner in many real-world applications, which means the data distribution keeps changing over time. Most existing RS image hashing methods are batch-based models whose hash functions are learned once for all and kept fixed all the time. Therefore, the pre-trained hash functions might not fit the ever-growing new RS images. Moreover, the batch-based models have to load all the training images into memory for model learning, which consumes many computing and memory resources. To address the above deficiencies, we propose a new online hashing method, which learns and adapts its hashing functions with respect to the newly incoming RS images in terms of a novel online partial random learning scheme. Our hash model is updated in a sequential mode such that the representative power of the learned binary codes for RS images are improved accordingly. Moreover, benefiting from the online learning strategy, our proposed hashing approach is quite suitable for scalable real-world remote sensing image retrieval. Extensive experiments on two large-scale RS image databases under online setting demonstrated the efficacy and effectiveness of the proposed method.

Highlights

  • With the rapid development of satellite and aerial vehicle technologies, we have entered an era of remote sensing (RS) big data

  • For the online hashing methods, the proposed online partial randomness hashing (OPRH) achieves better results compared with the competitors in most cases

  • By comparing our OPRH method with the batch-based hashing methods, we can find that our OPRH obtains comparable performance to the batch methods on SAT-4 dataset while sometimes achieves even better results than all of the other compared approaches on SAT-6 dataset, which has indicated the effectiveness of the proposed online hashing method

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Summary

Introduction

With the rapid development of satellite and aerial vehicle technologies, we have entered an era of remote sensing (RS) big data. Content-based RS image retrieval has been comprehensively studied [1,2,3,4], in which the similarity of RS images is measured by different kinds of visual descriptors. Local invariant [5], morphological [6], textural [7,8,9], and data-driven features [10,11,12,13] have been evaluated in terms of content-based RS image retrieval tasks. To further improve image retrieval performance levels, Li et al [14] proposed a multiple feature-based remote sensing image retrieval approach by combining handcrafted features and data-driven features via unsupervised feature learning. The storage of the image descriptors is a bottleneck for large-scale RS image retrieval problems

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