首页> 外国专利> METHOD OF TRAINING A NEURAL NETWORK TO REFLECT EMOTIONAL PERCEPTION, RELATED SYSTEM AND METHOD FOR CATEGORIZING AND FINDING ASSOCIATED CONTENT AND RELATED DIGITAL MEDIA FILE EMBEDDED WITH A MULTI-DIMENSIONAL PROPERTY VECTOR

METHOD OF TRAINING A NEURAL NETWORK TO REFLECT EMOTIONAL PERCEPTION, RELATED SYSTEM AND METHOD FOR CATEGORIZING AND FINDING ASSOCIATED CONTENT AND RELATED DIGITAL MEDIA FILE EMBEDDED WITH A MULTI-DIMENSIONAL PROPERTY VECTOR

机译:培训神经网络以反映用于分类和查找与多维属性向量的相关内容和相关数字媒体文件的情绪感知,相关系统和方法的方法

摘要

A property vector representing extractable measurable properties, such as musical properties, of a file is mapped to semantic properties for the file. This is achieved by using artificial neural networks “ANNs” in which weights and biases are trained to align a distance dissimilarity measure in property space for pairwise comparative files back towards a corresponding semantic distance dissimilarity measure in semantic space for those same files. The result is that, once optimised, the ANNs can process any file, parsed with those properties, to identify other files sharing common traits reflective of emotional-perception, thereby rendering a more liable and true-to-life result of similarity/dissimilarity. This contrasts with simply training a neural network to consider extractable measurable properties that, in isolation, do not provide a reliable contextual relationship into the real-world.
机译:代表文件的可提取可测量属性的属性矢量(例如音乐属性)映射到文件的语义属性。 这是通过使用人工神经网络“ANNS”来实现的,其中培训权重和偏置以对准属性空间中的距离异化度量,以便对与那些相同文件的语义空间中的相应语义距离不相似度量进行对齐。 结果是,一旦优化,ANN就可以处理任何文件,与这些属性一起解析,以识别共享常见特征的其他文件反映情绪感知的常见特征,从而呈现相似性/不相似性的更责任和真实的结果。 这与简单地训练神经网络以考虑可提取的可测量属性,以孤立地提供可靠的语境关系,以便无法向现实世界提供可靠的上下文关系。

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