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A supervised multimodal search re-ranking technique using visual semantics

机译:使用视觉语义的监督多峰搜索重新排序技术

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摘要

The multimedia content in a webpage is usually given least importance in webpage ranking. A better user satisfaction could be achieved if the web pages are ranked based on multiple modalities rather than just depending on the textual content. A better ranking of the web pages is proposed using natural language descriptions of images along with the textual content in a webpage is being proposed. The inter-modal correspondences between text and visual data are learned using the convolutional neural network assisted by the datasets of images and their sentence descriptors. The model is based on convolutional neural networks over images to generate the image descriptor and Dandelion API for their similarity measure with the query. The image description is algorithmically generated rather depending on the image annotations present. Finally, it has been proven that the re-ranked web pages using the generated descriptions significantly outperform the state of art retrieval models.
机译:网页中的多媒体内容通常在网页排名中最重要。 如果网页基于多种方式排序,则可以实现更好的用户满意度,而不是根据文本内容。 建议使用自然语言描述以及在网页中的自然语言描述提出了更好的网页排名。 使用图像数据集及其句子描述符辅助的卷积神经网络来学习文本和视觉数据之间的模态对应关系。 该模型基于图像上的卷积神经网络,以生成图像描述符和蒲公英API,用于其相似度测量与查询。 图像描述是算法生成的,而是根据存在的图像注释而产生。 最后,已经证明,使用所生成的描述重新排名的网页显着优于艺术检索模型的状态。

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