Sequential Weakly Labeled Multi-Activity Localization and Recognition on
Wearable Sensors using Recurrent Attention Networks
- URL: http://arxiv.org/abs/2004.05768v3
- Date: Tue, 3 Aug 2021 14:14:30 GMT
- Title: Sequential Weakly Labeled Multi-Activity Localization and Recognition on
Wearable Sensors using Recurrent Attention Networks
- Authors: Kun Wang, Jun He, Lei Zhang
- Abstract summary: We propose a recurrent attention network (RAN) to handle sequential weakly labeled multi-activity recognition and location tasks.
Our RAN model can simultaneously infer multi-activity types from the coarse-grained sequential weak labels.
It will greatly reduce the burden of manual labeling.
- Score: 13.64024154785943
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the popularity and development of the wearable devices such as
smartphones, human activity recognition (HAR) based on sensors has become as a
key research area in human computer interaction and ubiquitous computing. The
emergence of deep learning leads to a recent shift in the research of HAR,
which requires massive strictly labeled data. In comparison with video data,
activity data recorded from accelerometer or gyroscope is often more difficult
to interpret and segment. Recently, several attention mechanisms are proposed
to handle the weakly labeled human activity data, which do not require accurate
data annotation. However, these attention-based models can only handle the
weakly labeled dataset whose sample includes one target activity, as a result
it limits efficiency and practicality. In the paper, we propose a recurrent
attention networks (RAN) to handle sequential weakly labeled multi-activity
recognition and location tasks. The model can repeatedly perform steps of
attention on multiple activities of one sample and each step is corresponding
to the current focused activity. The effectiveness of the RAN model is
validated on a collected sequential weakly labeled multi-activity dataset and
the other two public datasets. The experiment results show that our RAN model
can simultaneously infer multi-activity types from the coarse-grained
sequential weak labels and determine specific locations of every target
activity with only knowledge of which types of activities contained in the long
sequence. It will greatly reduce the burden of manual labeling. The code of our
work is available at https://github.com/KennCoder7/RAN.
Related papers
- CLAN: A Contrastive Learning based Novelty Detection Framework for Human
Activity Recognition [3.0108863071498035]
CLAN is a two-tower contrastive learning-based novelty detection framework for human activity recognition.
It is tailored to challenges with human activity characteristics, including the significance of temporal and frequency features.
Experiments on four real-world human activity datasets show that CLAN surpasses the best performance of existing novelty detection methods.
arXiv Detail & Related papers (2024-01-17T03:57:36Z) - Cross-Domain HAR: Few Shot Transfer Learning for Human Activity
Recognition [0.2944538605197902]
We present an approach for economic use of publicly available labeled HAR datasets for effective transfer learning.
We introduce a novel transfer learning framework, Cross-Domain HAR, which follows the teacher-student self-training paradigm.
We demonstrate the effectiveness of our approach for practically relevant few shot activity recognition scenarios.
arXiv Detail & Related papers (2023-10-22T19:13:25Z) - UMSNet: An Universal Multi-sensor Network for Human Activity Recognition [10.952666953066542]
This paper proposes a universal multi-sensor network (UMSNet) for human activity recognition.
In particular, we propose a new lightweight sensor residual block (called LSR block), which improves the performance.
Our framework has a clear structure and can be directly applied to various types of multi-modal Time Series Classification tasks.
arXiv Detail & Related papers (2022-05-24T03:29:54Z) - HAR-GCNN: Deep Graph CNNs for Human Activity Recognition From Highly
Unlabeled Mobile Sensor Data [61.79595926825511]
Acquiring balanced datasets containing accurate activity labels requires humans to correctly annotate and potentially interfere with the subjects' normal activities in real-time.
We propose HAR-GCCN, a deep graph CNN model that leverages the correlation between chronologically adjacent sensor measurements to predict the correct labels for unclassified activities.
Har-GCCN shows superior performance relative to previously used baseline methods, improving classification accuracy by about 25% and up to 68% on different datasets.
arXiv Detail & Related papers (2022-03-07T01:23:46Z) - Human Activity Recognition on wrist-worn accelerometers using
self-supervised neural networks [0.0]
Measures of Activity of Daily Living (ADL) are an important indicator of overall health but difficult to measure in-clinic.
We propose a self-supervised learning paradigm to create a robust representation of accelerometer data that can generalize across devices and subjects.
We also propose a segmentation algorithm which can identify segments of salient activity and boost HAR accuracy on continuous real-life data.
arXiv Detail & Related papers (2021-12-22T23:35:20Z) - Self-supervised Pretraining with Classification Labels for Temporal
Activity Detection [54.366236719520565]
Temporal Activity Detection aims to predict activity classes per frame.
Due to the expensive frame-level annotations required for detection, the scale of detection datasets is limited.
This work proposes a novel self-supervised pretraining method for detection leveraging classification labels.
arXiv Detail & Related papers (2021-11-26T18:59:28Z) - Few-Shot Fine-Grained Action Recognition via Bidirectional Attention and
Contrastive Meta-Learning [51.03781020616402]
Fine-grained action recognition is attracting increasing attention due to the emerging demand of specific action understanding in real-world applications.
We propose a few-shot fine-grained action recognition problem, aiming to recognize novel fine-grained actions with only few samples given for each class.
Although progress has been made in coarse-grained actions, existing few-shot recognition methods encounter two issues handling fine-grained actions.
arXiv Detail & Related papers (2021-08-15T02:21:01Z) - Diverse Complexity Measures for Dataset Curation in Self-driving [80.55417232642124]
We propose a new data selection method that exploits a diverse set of criteria that quantize interestingness of traffic scenes.
Our experiments show that the proposed curation pipeline is able to select datasets that lead to better generalization and higher performance.
arXiv Detail & Related papers (2021-01-16T23:45:02Z) - ZSTAD: Zero-Shot Temporal Activity Detection [107.63759089583382]
We propose a novel task setting called zero-shot temporal activity detection (ZSTAD), where activities that have never been seen in training can still be detected.
We design an end-to-end deep network based on R-C3D as the architecture for this solution.
Experiments on both the THUMOS14 and the Charades datasets show promising performance in terms of detecting unseen activities.
arXiv Detail & Related papers (2020-03-12T02:40:36Z) - Stance Detection Benchmark: How Robust Is Your Stance Detection? [65.91772010586605]
Stance Detection (StD) aims to detect an author's stance towards a certain topic or claim.
We introduce a StD benchmark that learns from ten StD datasets of various domains in a multi-dataset learning setting.
Within this benchmark setup, we are able to present new state-of-the-art results on five of the datasets.
arXiv Detail & Related papers (2020-01-06T13:37:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.