AMIR: Active Multimodal Interaction Recognition from Video and Network Traffic in Connected Environments

Shinan Liu
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引用次数: 11

Abstract

Activity recognition using video data is widely adopted for elder care, monitoring for safety and security, and home automation. Unfortunately, using video data as the basis for activity recognition can be brittle, since models trained on video are often not robust to certain environmental changes, such as camera angle and lighting changes. There has been a proliferation of network-connected devices in home environments. Interactions with these smart devices are associated with network activity, making network data a potential source for recognizing these device interactions. This paper advocates for the synthesis of video and network data for robust interaction recognition in connected environments. We consider machine learning-based approaches for activity recognition, where each labeled activity is associated with both a video capture and an accompanying network traffic trace. We develop a simple but effective framework AMIR (Active Multimodal Interaction Recognition) 1 that trains independent models for video and network activity recognition respectively, and subsequently combines the predictions from these models using a meta-learning framework. Whether in lab or at home, this approach reduces the amount of “paired” demonstrations needed to perform accurate activity recognition, where both network and video data are collected simultaneously. Specifically, the method we have developed requires up to 70.83% fewer samples to achieve 85% F1 score than random data collection, and improves accuracy by 17.76% given the same number of samples. CCS
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AMIR:连接环境中视频和网络流量的主动多模态交互识别
使用视频数据的活动识别被广泛应用于老年人护理、安全监控和家庭自动化。不幸的是,使用视频数据作为活动识别的基础可能是脆弱的,因为在视频上训练的模型通常对某些环境变化(如摄像机角度和照明变化)不太健壮。家庭环境中联网设备的数量激增。与这些智能设备的交互与网络活动相关联,使网络数据成为识别这些设备交互的潜在来源。本文提倡视频和网络数据的综合,以实现互联环境下的鲁棒交互识别。我们考虑基于机器学习的活动识别方法,其中每个标记的活动都与视频捕获和伴随的网络流量跟踪相关联。我们开发了一个简单但有效的框架AMIR(主动多模态交互识别)1,它分别训练视频和网络活动识别的独立模型,随后使用元学习框架将这些模型的预测结合起来。无论是在实验室还是在家里,这种方法减少了执行准确活动识别所需的“配对”演示的数量,其中同时收集网络和视频数据。具体来说,我们开发的方法比随机数据收集最多需要减少70.83%的样本来达到85%的F1分数,在相同数量的样本下,准确率提高了17.76%。CCS
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