多模态传感器融合的鲁棒且经济的深度学习模型

Sanju Xaviar
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引用次数: 0

摘要

深度融合网络最近受到了相当大的关注,因为越来越多的物联网设备、智能手机和可穿戴设备采用了多种传感模式,以及它们从人类活动识别到智能家居自动化的有前途的应用。尽管这一领域最近取得了进展,但仍有一些实际要求经常被忽视。具体来说,融合网络必须在环境的瞬间和长期变化中保持其性能,对传感器数据质量问题具有鲁棒性,并且具有合理的尺寸,以便可以部署在资源受限的设备上。我的博士研究旨在通过构建强大的多模态融合网络来解决这些挑战,该网络可以快速泛化到新环境中,并且具有更少的可训练权重,从而降低内存和碳足迹。
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Robust and Affordable Deep Learning Models for Multimodal Sensor Fusion
Deep fusion networks have received considerable attention lately due to the growing adoption of IoT devices, smartphones, and wearables that incorporate multiple sensing modalities, and their promising applications from human activity recognition to smart home automation. Despite recent advances in this area, there are several practical requirements that are often overlooked. Specifically, fusion networks must maintain their performance during momentary and long-term changes in the environment, be robust to sensor data quality issues, and have a reasonable size so that they can be deployed on resource-constrained devices. My PhD research aims to address these challenges by building robust multimodal fusion networks that rapidly generalize to new environments and have a smaller number of trainable weights, hence lower memory and carbon footprints.
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