Feature-level or decision-level fusion of CNN video features and audio descriptors via SVR achieves CCC 0.749 (arousal) and 0.565 (valence) on RECOLA after preprocessing and post-processing.
Multimodal Classification for Analysing Social Media
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abstract
Classification of social media data is an important approach in understanding user behavior on the Web. Although information on social media can be of different modalities such as texts, images, audio or videos, traditional approaches in classification usually leverage only one prominent modality. Techniques that are able to leverage multiple modalities are often complex and susceptible to the absence of some modalities. In this paper, we present simple models that combine information from different modalities to classify social media content and are able to handle the above problems with existing techniques. Our models combine information from different modalities using a pooling layer and an auxiliary learning task is used to learn a common feature space. We demonstrate the performance of our models and their robustness to the missing of some modalities in the emotion classification domain. Our approaches, although being simple, can not only achieve significantly higher accuracies than traditional fusion approaches but also have comparable results when only one modality is available.
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cs.LG 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Emotion Recognition Using Fusion of Audio and Video Features
Feature-level or decision-level fusion of CNN video features and audio descriptors via SVR achieves CCC 0.749 (arousal) and 0.565 (valence) on RECOLA after preprocessing and post-processing.