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Cross-Media Retrieval Method Based on Temporal-spatial Clustering and Multimodal Fusion

机译:基于时间空间聚类和多模式融合的跨媒检索方法

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Aiming at the problem of the "semantic gap" and the "dimensionality curse", this paper discussed the model of cross-media retrieval. The methods of feature extraction and fusion of multimedia were given for processing high-dimensional data, and a nonlinear hybrid classifier based on support vector hidden Markov models was design for implementation semantic mapping and learning. According to Shannon information theory, calculation methods of similarity and correlation were given to implement temporal-spatial clustering. Typhoon and other multimedia disaster data are selected for experiments and comparisons. Experimental results show that this method improves the performance of cross-media retrieval.
机译:旨在瞄准“语义差距”的问题和“维度诅咒”,本文讨论了跨媒检索模型。给出了用于处理高维数据的特征提取和多媒体融合的方法,并且基于支持向量隐马尔可夫模型的非线性混合分类器是实现语义映射和学习的设计。根据香农信息理论,给出了相似性和相关性的计算方法来实现时间空间聚类。选择台风和其他多媒体灾难数据进行实验和比较。实验结果表明,该方法提高了跨媒检索的性能。

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