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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Image collection summarization via dictionary learning for sparse representation
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Image collection summarization via dictionary learning for sparse representation

机译:通过字典学习对图像集合进行汇总以实现稀疏表示

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摘要

In this paper, a novel approach is developed to achieve automatic image collection summarization. The effectiveness of the summary is reflected by its ability to reconstruct the original set or each individual image in the set. We have leveraged the dictionary learning for sparse representation model to construct the summary and to represent the image. Specifically we reformulate the summarization problem into a dictionary learning problem by selecting bases which can be sparsely combined to represent the original image and achieve a minimum global reconstruction error, such as MSE (Mean Square Error). The resulting Sparse Least Square problem is NP-hard, thus a simulated annealing algorithm is adopted to learn such dictionary, or image summary, by minimizing the proposed optimization function. A quantitative measurement is defined for assessing the quality of the image summary by investigating both its reconstruction ability and its representativeness of the original image set in large size. We have also compared the performance of our image summarization approach with that of six other baseline summarization tools on multiple image sets (ImageNet, NUS-WIDE-SCENE and Event image set). Our experimental results have shown that the proposed dictionary learning approach can obtain more accurate results as compared with other six baseline summarization algorithms.
机译:在本文中,开发了一种新颖的方法来实现自动图像收集摘要。摘要的有效性体现在摘要重构原始集或集合中每个单独图像的能力上。我们利用字典学习中的稀疏表示模型来构造摘要并表示图像。具体而言,我们通过选择可稀疏组合以表示原始图像并实现最小全局重建误差(例如MSE(均方误差))的库,将摘要问题重新构建为字典学习问题。由此产生的稀疏最小二乘问题是NP难的,因此采用模拟退火算法来通过最小化建议的优化函数来学习此类字典或图像摘要。定义了一种定量测量,以通过研究其摘要图像的重建能力和对原始图像集的代表性来评估图像摘要的质量。我们还比较了我们的图像摘要方法的性能与其他六个在多个图像集(ImageNet,NUS-WIDE-SCENE和事件图像集)上的基线摘要工具的性能。我们的实验结果表明,与其他六种基线汇总算法相比,所提出的字典学习方法可以获得更准确的结果。

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