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Multimodal Deep Learning

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TLDR
This work presents a series of tasks for multimodal learning and shows how to train deep networks that learn features to address these tasks, and demonstrates cross modality feature learning, where better features for one modality can be learned if multiple modalities are present at feature learning time.
Abstract
Deep networks have been successfully applied to unsupervised feature learning for single modalities (e.g., text, images or audio). In this work, we propose a novel application of deep networks to learn features over multiple modalities. We present a series of tasks for multimodal learning and show how to train deep networks that learn features to address these tasks. In particular, we demonstrate cross modality feature learning, where better features for one modality (e.g., video) can be learned if multiple modalities (e.g., audio and video) are present at feature learning time. Furthermore, we show how to learn a shared representation between modalities and evaluate it on a unique task, where the classifier is trained with audio-only data but tested with video-only data and vice-versa. Our models are validated on the CUAVE and AVLetters datasets on audio-visual speech classification, demonstrating best published visual speech classification on AVLetters and effective shared representation learning.

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Citations
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Journal ArticleDOI

Modeling Multimodal Clues in a Hybrid Deep Learning Framework for Video Classification

TL;DR: A novel hybrid deep learning framework is introduced that integrates useful clues from multiple modalities, including static spatial appearance information, motion patterns within a short time window, audio information, as well as long-range temporal dynamics.
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Deep multi-view learning methods: a review

TL;DR: In this article, a comprehensive review on deep multi-view learning from the following two perspectives: MVL methods in deep learning scope and deep MVL extensions of traditional methods is presented, and the authors attempt to identify some open challenges to inform future research directions.
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Survey on automatic lip-reading in the era of deep learning

TL;DR: It is found that DL architectures perform similarly to traditional ones for simpler tasks but report significant improvements in more complex tasks, such as word or sentence recognition, with up to 40% improvement in word recognition rates.
Proceedings ArticleDOI

Cross-modal adaptation for RGB-D detection

TL;DR: This paper proposes a technique to adapt convolutional neural network (CNN) based object detectors trained on RGB images to effectively leverage depth images at test time to boost detection performance.
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DISTILLER: Encrypted traffic classification via multimodal multitask deep learning

TL;DR: A novel multimodal multitask deep learning approach for traffic classification, leading to the Distiller classifier, which is able to capitalize traffic-data heterogeneity, overcome performance limitations of existing (myopic) single-modal deep learning-based traffic classification proposals, and simultaneously solve different traffic categorization problems associated to different providers’ desiderata.
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