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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Adaptive features selection for expert datasets: A cultural heritage application
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Adaptive features selection for expert datasets: A cultural heritage application

机译:专家数据集的自适应特征选择:文化遗产应用程序

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摘要

Image Retrieval is still a very active field of image processing as the number of available image datasets continuously increases. One of the principal objectives of Content-Based Image Retrieval (CBIR) is to return to user the most similar images to a given query with respect to their visual content. Our work fits in a very specific application context: indexing small expert image dataset, e.g. cultural heritage images, with no prior knowledge on the images. Because of the image complexity, one of our contributions is the choice of effective descriptors from literature placed in direct competition. Two strategies are used to combine features: a psycho-visual one and a statistical one. In this context, we propose an automatic and adaptive framework based on the well-known bags of visual words and phrases models that select relevant visual descriptors for each keypoint to construct a more discriminative image representation. Experiment results show the adaptiveness and the performance of our framework on "generic" benchmark datasets and on two cultural heritage datasets.
机译:图像检索仍然是图像处理的非常有效的图像处理,因为可用图像数据集连续增加。基于内容的图像检索(CBIR)的主要目标之一是返回到对关于其视觉内容的给定查询的用户最相似的图像。我们的工作适合一个非常具体的应用上下文:索引小专家图像数据集,例如,文化遗产图像,没有关于图像的先验知识。由于图像复杂性,我们的贡献之一是选择从直接竞争中的文学中的有效描述符。两种策略用于结合特征:一个心理视觉之一和统计一个。在此上下文中,我们提出了一种基于众所周知的视觉单词和短语模型的自动和自适应框架,该模型为每个关键点选择相关的视觉描述符来构造更辨别的图像表示。实验结果显示了我们在“通用”基准数据集和两个文化遗产数据集上的框架的适应性和性能。

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