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Kid's song classification based on mood parameters using K-Nearest Neighbor classification method and Self Organizing Map

机译:基于使用K-Collect邻分类方法和自组织地图的孩子歌曲分类

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Music is closely related to human psychology. A piece of music often associated with certain adjectives such as happy, sad, romantic, and so on. The linkage between the music with a certain mood has been widely used in various occasions by people and music classification based on relevance to a particular emotion is important. This research concerns with music classification system based on mood parameters using K-Nearest Neighbor classification method and Self Organizing Map. The mood parameters used is based on Robert Thayer's energy-stress model which are exuberance / happy, contentment / relax, anxious and depression. Features that are used are rhythm patterns of the music. The system built has additional facility that that can play songs according to mood chosen. The system is tested using a set of kid song and can show the number of clusters and the mood of a song collection. Classification results obtained by the two classification methods, the K-Nearest Neighbor and Self Organizing Map, are compared with the mood obtained by child psychology experts.
机译:音乐与人类心理学密切相关。一段音乐经常与某些形容词相关,如快乐,悲伤,浪漫等。具有某种情绪的音乐之间的联系已被人们和音乐分类基于与特定情绪的相关性的广泛使用。本研究涉及基于使用k最近邻分类方法和自组织地图的情绪参数的音乐分类系统。所使用的情绪参数是基于Robert Thayer的能量应力模型,这些能力模型是繁荣/快乐,满足/放松,焦虑和抑郁症。使用的功能是音乐的节奏模式。系统构建的具有额外的设施,可以根据所选的情绪播放歌曲。使用一组小孩歌曲测试系统,可以显示群集数量和歌曲集合的情绪。通过两种分类方法,K最近邻居和自组织地图获得的分类结果与儿童心理学专家获得的情绪进行比较。

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