基于区域关注的多尺度特征融合图像检索

Rui Jixiang, Sia Chen
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摘要

随着深度学习技术的发展,计算机视觉技术也得到了显著的提高。图像检索是一种常用的从图像数据库中检索感兴趣的图像的技术,它可以帮助用户更快地找到所需的图像。然而,传统的图像检索方法往往忽略了复杂的尺度信息,如不同尺度下的特征可能不同,往往不能满足用户的需求。因此,基于区域关注特征融合机制的图像检索可以克服这一缺点,通过区域关注机制强调多尺度特征,从而提高图像检索的性能。本文提出了一种基于区域关注的多尺度特征融合的图像检索方法,可以有效地利用多尺度特征。通过在主流图像检索数据集上的实验验证了RMFF算法的有效性。
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Regional attention based multi-scale feature fusion for image retrieval
With the development of deep learning techniques, computer vision techniques have also been significantly improved. Image retrieval is a common technique used to retrieve images of interest from image databases, which can help users find the desired images more quickly. However, traditional image retrieval methods often fail to meet user needs because they often ignore complex scale information, e.g., features may differ at different scales. Therefore, an image retrieval based on a region-attention feature fusion mechanism can overcome this drawback, and it can improve the performance of image retrieval by emphasizing multi-scale features through a region-attention mechanism. In this paper, we propose an image retrieval method based on regional attention based multi-scale feature fusion, which can effectively use multiscale features. The effectiveness of RMFF is demonstrated by conducting experiments on mainstream image retrieval datasets.
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