The shuffle mode, where songs are played in a randomized order that is decided upon for all tracks at once, is widely found and known to exist in music player systems. There are only few music enthusiasts who use this mode since it either is too random to suit their mood or it keeps on repeating the same list every time. In this paper, we propose to build a convolutional deep belief network(CDBN) that is trained to perform genre recognition based on audio features retrieved from the records of the Million Song Dataset. The learned parameters shall be used to initialize a multi-layer perceptron which takes extracted features of user's playlist as input alongside the metadata to classify to various categories. These categories will be shuffled retrospectively based on the metadata to autonomously provide with a list that is efficacious in playing songs that are desired by humans in normal conditions.
翻译:以随机顺序播放歌曲的洗牌模式, 即所有音轨同时决定的曲调, 被广泛发现并已知存在于音乐播放器系统中。 使用这种模式的音乐爱好者很少, 因为这种模式过于随机, 不适合他们的情绪, 或者每次重复相同的列表。 在本文中, 我们提议建立一个革命性深层次的信仰网络( CDBN), 受过训练, 能够根据从百万宋数据集记录中提取的音频特征进行族系识别 。 学习的参数将用于初始化一个多层的显示器, 它将提取用户播放列表的功能, 作为输入, 并按元数据进行分类 。 这些类别会根据元数据进行回溯性调整, 以便自动提供在正常条件下播放人类想要的歌曲时有效的列表 。