情感音乐生成:使用Python和Dart的有效性和用户满意度分析

Crystal Chong, Ang Li
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摘要

当今社会普遍存在的一个问题是需要产生新的音乐。越来越多的人通过社交媒体将视频和其他形式的内容上传到互联网上,视频通常可以通过添加音乐来增强效果[6]。然而,创作音乐可能是一个耗时且昂贵的过程。因此,创建了一个应用程序,它可以使用情感作为音乐生成模型的输入来生成音乐。为了测试通过情感分析生成音乐的方法是否有效,进行了一项实验,测试参与者样本认为生成的音乐在1到10的范围内的准确性[7]。根据实验结果,该应用程序似乎在生成音乐方面做得相当好,这些音乐准确地代表了输入信息中所要表达的情感。我们还进行了一项调查,以测试用户在使用该应用程序生成音乐时的满意度。参与者的反馈表明,他们对生成的音乐与他们输入信息中的意图的匹配程度普遍感到满意,他们似乎也对应用程序的使用方便和用户界面的直观感到非常满意[8]。然而,由于便利性的评分远远高于音乐生成本身的有效性,这可能表明应用程序在识别输入信息的情绪方面仍有改进的空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotional Music Generation: An Analysis of Effectiveness and user Satisfaction by using Python and Dart
An issue that is prevalent in today’s society is the need for new music to be generated. More people are uploading videos and other forms of content to the internet through social media, and videos can often be enhanced by adding music to them [6]. However, creating music can be a time-consuming and expensive process. Therefore, an application was created that can generate music using emotions as inputs for the music generation model. To test how well the method of music generation through sentimental analysis works, an experiment was conducted that tests how accurately a sample of participants believe that the generated music was on a scale from one to ten [7]. According to the results of the experiment, the application appears to do fairly well at generating music that accurately represents the sentiment that was intended in the inputted message. A survey was also conducted to test user satisfaction when working with the application to generate music. The feedback from the participants indicated that they were generally satisfied with how well the generated music matched their intent in the inputted message, and they also seemed to be very satisfied with how convenient the application was to use and how intuitive the user interface was [8]. However, as the ratings for convenience were much higher than the ones regarding the effectiveness of the music generation itself, this may indicate that the application still has room for improvement when it comes to recognizing the sentiment of the inputted message.
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