融合深度时空特征的高效视频检索

A. Banerjee, Ela Kumar, Ravinder M
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引用次数: 0

摘要

针对视频检索的目标,本研究提出了基于深度时空特征的小波变换。由于1级小波从任何信号或特征向量中提取两个分量,因此可以计算查询视频特征和原型视频特征之间的成分相似性。确定前1和前5精度的最终差异是通过融合这些差异而产生的。结果表明,所建议的技术比基线策略执行得更好。下面的改进策略可以通过使用快速学习网络来进一步研究,该网络在两个数据集的训练集上进行训练,以提供更好的查询分类以及原型特征向量,这将提高检索精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transformed Deep Spatio Temporal-Features with Fused Distance for Efficient Video Retrieval
For the goal of video retrieval, this research proposes wavelet transformations on deep spatiotemporal characteristics. The component-wise similarities between the query video feature and prototype video feature are calculated because level 1 wavelets extract two components from any signal or feature vector. The ultimate dissimilarity for determining the top 1 and top 5 accuracy is created by fusing these differences. The outcomes demonstrate that the suggested technique performs better than a baseline strategy. The following strategy for improvement can be investigated further by employing fast learning networks that are trained on the training sets of both data sets to provide better classification of the query as well as the prototype feature vectors, which would enhance the retrieval accuracy.
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