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Building semantic understanding beyond deep learning from sound and vision

机译:从声音和愿景深度学习超越深度学习的语义理解

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Deep learning-based models have recently been widely successful at outperforming traditional approaches in several computer vision applications such as image classification, object recognition and action recognition. However, those models are not naturally designed to learn structural information that can be important to tasks such as human pose estimation and structured semantic interpretation of video events. In this paper, we demonstrate how to build structured semantic understanding of audio-video events by reasoning on multiple-label decisions of deep visual models and auditory models using Grenander's structures for imposing semantic consistency. The proposed structured model does not require joint training of the structural semantic dependencies and deep models. Instead they are independent components linked by Grenander's structures. Furthermore, we exploited Grenander's structures as a means to facilitate and enrich the model with fusion of multimodal sensory data; in particular, auditory features with visual features. Overall, we observed improvements in the quality of semantic interpretations using deep models and auditory features in combination with Grenander's structures, reflecting as numerical improvements of up to 11.5% and 12.3% in precision and recall, respectively.
机译:最近,基于深度学习的模型在诸如图像分类,对象识别和动作识别之类的几个计算机视觉应用中表现出优于传统方法,最近被广泛成功。然而,这些模型并非自然地设计用于学习对人类姿势估计和视频事件的结构化语义解释等任务来说是重要的结构信息。在本文中,我们展示了如何通过推理使用牙线结构来推动深度视觉模型和听觉模型的多标签决策来构建对音频 - 视频事件的结构化语义理解。建议的结构化模型不需要联合培训结构语义依赖性和深层模型。相反,它们是由甘蓝的结构链接的独立组件。此外,我们利用施林的结构作为促进和丰富模型的方法,以融合多式联传感数据;特别是,具有视觉功能的听觉功能。总体而言,我们观察了使用深层模型和听觉特征的语义解释质量的改善,以及磨刀器的结构,分别反映为精度和召回的数值提高高达11.5%和12.3%。

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