基于多类循环gan的双模态图像检索

Girraj Pahariya
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引用次数: 1

摘要

基于内容的图像检索(CBIR)系统根据查询的内容从数据库中检索相关图像。大多数CBIR系统将查询图像作为输入,并基于从图像中提取的全局特征(如纹理、形状和颜色)从图库中检索相似的图像。有几种方法可以从图像数据库中查询用于检索目的。其中一些是文本,图像和草图。然而,传统的方法一次只支持一个领域。为了实现多模态CBIR系统,需要弥合不同领域(草图和图像)之间的差距。在这项工作中,我们提出了一种新的基于双峰查询的检索框架,它可以同时从草图和图像域获取输入。该框架旨在通过使用生成对抗网络(GANs)和监督深度域自适应技术学习映射函数来减小域间隙。在两个流行的草图数据集(Sketchy和TU-Berlin)上进行了大量的实验和几个基线的比较,表明了我们提出的框架的有效性。
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Bi-Modal Content Based Image Retrieval using Multi-class Cycle-GAN
Content Based Image Retrieval (CBIR) systems retrieve relevant images from a database based on the content of the query. Most CBIR systems take a query image as input and retrieve similar images from a gallery, based on the global features (such as texture, shape, and color) extracted from an image. There are several ways of querying from an image database for retrieval purpose. Some of which are text, image, and sketch. However, the traditional methodologies support only one of the domains at a time. There is a need of bridging the gap between different domains (sketch and image) for enabling a Multi-Modal CBIR system. In this work, we propose a novel bimodal query based retrieval framework, which can take inputs from both sketch and image domains. The proposed framework aims at reducing the domain gap by learning a mapping function using Generative Adversarial Networks (GANs) and supervised deep domain adaptation techniques. Extensive experimentation and comparison with several baselines on two popular sketch datasets (Sketchy and TU-Berlin) show the effectiveness of our proposed framework.
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