TL;DR
This paper introduces an asymmetric deep hashing method for remote sensing image retrieval that improves retrieval accuracy and efficiency by separately generating hash codes for query and database images using a novel learning approach.
Contribution
The paper proposes a novel asymmetric hash code learning (AHCL) method that separately generates hash codes for query and database images, enhancing retrieval performance in large-scale remote sensing datasets.
Findings
Outperforms symmetric methods in accuracy and efficiency
Effective integration of semantic and similarity information
Demonstrated on three public datasets
Abstract
Remote sensing image retrieval (RSIR), aiming at searching for a set of similar items to a given query image, is a very important task in remote sensing applications. Deep hashing learning as the current mainstream method has achieved satisfactory retrieval performance. On one hand, various deep neural networks are used to extract semantic features of remote sensing images. On the other hand, the hashing techniques are subsequently adopted to map the high-dimensional deep features to the low-dimensional binary codes. This kind of methods attempts to learn one hash function for both the query and database samples in a symmetric way. However, with the number of database samples increasing, it is typically time-consuming to generate the hash codes of large-scale database images. In this paper, we propose a novel deep hashing method, named asymmetric hash code learning (AHCL), for RSIR. The…
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