Artificial intelligence is an urgent topic for scientific research today. Artificial intelligence is a human assistant in solving certain tasks, helps to automate many processes, including the analysis of audiovisual content. This article provides an overview of the literature on the existing topic. The literature divided into three thematic blocks. The conclusion is that this topic poorly studied in Russian science, and many tools for automated analysis of audiovisual content are under development.
artificial intelligence, machine learning, humanities, cinematography, automated analysis, neural networks
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