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Selection of Training Instances for Music Genre Classification

机译:音乐类型分类培训实例的选择

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In this paper we present a method for the selection of training instances based on the classification accuracy of a SVM classifier. The instances consist of feature vectors representing short-term, low-level characteristics of music audio signals. The objective is to build, from only a portion of the training data, a music genre classifier with at least similar performance as when the whole data is used. The particularity of our approach lies in a pre-classification of instances prior to the main classifier training: i.e. we select from the training data those instances that show better discrimination with respect to class memberships. On a very challenging dataset of 900 music pieces divided among 10 music genres, the instance selection method slightly improves the music genre classification in 2.4 percentage points. On the other hand, the resulting classification model is significantly reduced, permitting much faster classification over test data.
机译:在本文中,我们提出了一种基于SVM分类器的分类精度选择培训实例的方法。该实例包括表示短期,音频信号的短期低级特性的特征向量。目标是从训练数据的一部分构建,音乐流派分类器具有至少类似的性能,就像使用整个数据时一样。我们的方法的特殊性在于主分类器培训前的实例预先分类:即,我们从培训数据中选择了那些表现出与课程成员更好歧视的情况。在900音乐件的一个非常具有挑战性的数据集中,在10个音乐类型中,实例选择方法略微提高了2.4个百分点的音乐类型分类。另一方面,得到的分类模型显着减少,允许通过测试数据更快的分类。

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