In real life, acoustic scenes and audio events are naturally correlated. Humans instinctively rely on fine-grained audio events as well as the overall sound characteristics to distinguish diverse acoustic scenes. Yet, most previous approaches treat acoustic scene classification (ASC) and audio event classification (AEC) as two independent tasks. A few studies on scene and event joint classification either use synthetic audio datasets that hardly match the real world, or simply use the multi-task framework to perform two tasks at the same time. Neither of these two ways makes full use of the implicit and inherent relation between fine-grained events and coarse-grained scenes. To this end, this paper proposes a relation-guided ASC (RGASC) model to further exploit and coordinate the scene-event relation for the mutual benefit of scene and event recognition. The TUT Urban Acoustic Scenes 2018 dataset (TUT2018) is annotated with pseudo labels of events by a simple and efficient audio-related pre-trained model PANN, which is one of the state-of-the-art AEC models. Then, a prior scene-event relation matrix is defined as the average probability of the presence of each event type in each scene class. Finally, the two-tower RGASC model is jointly trained on the real-life dataset TUT2018 for both scene and event classification. The following results are achieved. 1) RGASC effectively coordinates the true information of coarse-grained scenes and the pseudo information of fine-grained events. 2) The event embeddings learned from pseudo labels under the guidance of prior scene-event relations help reduce the confusion between similar acoustic scenes. 3) Compared with other (non-ensemble) methods, RGASC improves the scene classification accuracy on the real-life dataset.
翻译:在现实生活中,声频场景和音频事件自然是相互关联的。 人类本能地依靠细微的音频事件和粗略的声频场景之间的隐含和内在关系来区分不同的声频场景。 然而,多数先前的方法将声频场景分类(ASC)和音频事件分类(AEC)作为两项独立的任务处理。 一些现场和事件联合分类研究要么使用与真实世界不相符的合成音频数据集,要么只是使用多任务框架来同时执行两个任务。 这两种方法都没有充分利用精细的音频事件和粗略的声频场景之间的隐含和内在的内在关系。 至此,本文建议采用一个以关系导为导的AEC模型和粗略的声频场景事件( RASC ) 模型和真实的预言时程( RGA) 预言时程( RGA) 时程( RGA) 时程( RGA) 时程( RGA) 时程( 时程) 时程( 时程) 时程( 机序中) 时程( 时程) 上) 时, 时程( 时程( 时段) 时程( 时段) 时段) 时段( 头) 时段( 时段) 上) 时, 时, 时段( 时段( 时段) 时段) 上) 上) 上) 上) 上) 时, 时, 时, 时, 时, 时, 时, 时, 时段( 时段( 时段( 时段( 时段) 时段( 时段) 时段) 时段) 时段) 时段) 时段( 时段) 时段) 时段) 时段( 时段( 时段) 时段) 机) 时段( 时段(上) 时段(上) 时段) 时段(上) 时段(上) 上) 时段( 时段) 时段(上) 时段) 时段(上) 上) 时, 时段(