EmoMTB: Emotion-aware Music Tower Blocks

Alessandro B. Melchiorre, D. Penz, Christian Ganhör, Oleg Lesota, Vasco Fragoso, Florian Friztl, Emilia Parada-Cabaleiro, Franz Schubert, M. Schedl
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引用次数: 1

Abstract

We introduce Emotion-aware Music Tower Blocks (EmoMTB), an audiovisual interface to explore large music collections. It creates a musical landscape, by adopting the metaphor of a city, where similar songs are grouped into the same building and nearby buildings form neighborhoods of particular genres. In order to personalize the user experience, an underlying classifier monitors textual user-generated content, by predicting their emotional state and adapting the audiovisual elements of the interface accordingly. EmoMTB enables users to explore different musical styles either within their comfort zone or outside of it. Besides, tailoring the results of the recommender engine to match the affective state of the user, EmoMTB offers a unique way to discover and enjoy music. EmoMTB supports exploring a collection of circa half a million streamed songs using a regular smartphone as a control interface to navigate in the landscape.
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EmoMTB:情感感知音乐塔楼
我们介绍了情感感知音乐塔块(EmoMTB),一个用于探索大型音乐收藏的视听界面。它通过采用城市的隐喻,创造了一个音乐景观,在同一个建筑中,相似的歌曲被分组,附近的建筑形成了特定类型的社区。为了个性化用户体验,底层分类器通过预测用户的情绪状态并相应地调整界面的视听元素来监控文本用户生成的内容。EmoMTB使用户可以在舒适区或舒适区之外探索不同的音乐风格。此外,根据用户的情感状态定制推荐引擎的结果,EmoMTB提供了一种独特的发现和欣赏音乐的方式。EmoMTB支持使用普通智能手机作为控制界面来浏览大约50万首流媒体歌曲。
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