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Audio Metric Learning by Using Siamese Autoencoders for One-Shot Human Fall Detection

机译:使用暹罗AutoEncoders进行单次人类坠落检测音频度量学习

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摘要

In the recent years, several supervised and unsupervised approaches to fall detection have been presented in the literature. These are generally based on a corpus of examples of human falls that are, though, hard to collect. For this reason, fall detection algorithms should be designed to gather as much information as possible from the few available data related to the type of events to be detected. The one-shot learning paradigm for expert systems training seems to naturally match these constraints, and this inspired the novel Siamese Neural Network (SNN) architecture for human fall detection proposed in this contribution. Acoustic data are employed as input, and the twin convolutional autoencoders composing the SNN are trained to perform a suitable metric learning in the audio domain and, thus, extract robust features to be used in the final classification stage. A large acoustic dataset has been recorded in three real rooms with different floor types and human falls performed by four volunteers, and then adopted for experiments. Obtained results show that the proposed approach, which only relies on two real human fall events in the training phase, achieves a F $_1$ -Measure of 93.58% during testing, remarkably outperforming the recent supervised and unsupervised state-of-art techniques selected for comparison.
机译:在近年来,文献中提出了几种监督和无监督的崩盘检测方法。这些通常基于人类跌倒的例子的语料库,但是难以收集。因此,堕落检测算法应该被设计成从与要检测的事件类型相关的可用数据收集尽可能多的信息。专家系统培训的单次学习范式似乎自然匹配这些限制,这激发了在这种贡献中提出的人类坠落检测的新型暹罗神经网络(SNN)架构。声学数据被用作输入,并且训练了构成SNN的双卷积AutoEncoders,以执行在音频域中的合适度量学习,从而提取用于最终分类阶段的鲁棒特征。一个大型声学数据集已在三个真正的房间中记录,具有四种志愿者执行的不同地板类型和人类跌落,然后采用实验。获得的结果表明,该方法仅依赖于训练阶段的两个真正的人类秋季事件,实现了一个f <内联公式xmlns:mml =“http://www.w3.org/1998/math/mathml” XMLNS:XLink =“http://www.w3.org/1999/xlink”> $ _ 1 $ -measure 93.58%在测试期间,选择最近的监督和无监督的最先进技术进行比较显着优于比较。

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