A Machine Learning-based Algorithm for Automated Detection of
Frequency-based Events in Recorded Time Series of Sensor Data
- URL: http://arxiv.org/abs/2310.10841v1
- Date: Mon, 16 Oct 2023 21:35:23 GMT
- Title: A Machine Learning-based Algorithm for Automated Detection of
Frequency-based Events in Recorded Time Series of Sensor Data
- Authors: Bahareh Medghalchi, Andreas Vogel
- Abstract summary: This work proposes a novel event detection method that allows to identify frequency-based events in time series data.
For the analysis of unseen time series data, events can be detected in their scalograms with the trained object detection model.
The algorithm, evaluated on unseen datasets, achieves a precision rate of 0.97 in event detection.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automated event detection has emerged as one of the fundamental practices to
monitor the behavior of technical systems by means of sensor data. In the
automotive industry, these methods are in high demand for tracing events in
time series data. For assessing the active vehicle safety systems, a diverse
range of driving scenarios is conducted. These scenarios involve the recording
of the vehicle's behavior using external sensors, enabling the evaluation of
operational performance. In such setting, automated detection methods not only
accelerate but also standardize and objectify the evaluation by avoiding
subjective, human-based appraisals in the data inspection. This work proposes a
novel event detection method that allows to identify frequency-based events in
time series data. To this aim, the time series data is mapped to
representations in the time-frequency domain, known as scalograms. After
filtering scalograms to enhance relevant parts of the signal, an object
detection model is trained to detect the desired event objects in the
scalograms. For the analysis of unseen time series data, events can be detected
in their scalograms with the trained object detection model and are thereafter
mapped back to the time series data to mark the corresponding time interval.
The algorithm, evaluated on unseen datasets, achieves a precision rate of 0.97
in event detection, providing sharp time interval boundaries whose accurate
indication by human visual inspection is challenging. Incorporating this method
into the vehicle development process enhances the accuracy and reliability of
event detection, which holds major importance for rapid testing analysis.
Related papers
- Event Detection via Probability Density Function Regression [0.0]
This study introduces a generalized regression-based approach to reframe the time-interval-defined event detection problem.
Inspired by heatmap regression techniques from computer vision, our approach aims to predict probability densities at event locations.
We demonstrate that regression-based approaches outperform segmentation-based methods across various state-of-the-art baseline networks and datasets.
arXiv Detail & Related papers (2024-08-23T01:58:56Z) - Deployment Prior Injection for Run-time Calibratable Object Detection [58.636806402337776]
We introduce an additional graph input to the detector, where the graph represents the deployment context prior.
During the test phase, any suitable deployment context prior can be injected into the detector via graph edits.
Even if the deployment prior is unknown, the detector can self-calibrate using deployment prior approximated using its own predictions.
arXiv Detail & Related papers (2024-02-27T04:56:04Z) - Graph Spatiotemporal Process for Multivariate Time Series Anomaly
Detection with Missing Values [67.76168547245237]
We introduce a novel framework called GST-Pro, which utilizes a graphtemporal process and anomaly scorer to detect anomalies.
Our experimental results show that the GST-Pro method can effectively detect anomalies in time series data and outperforms state-of-the-art methods.
arXiv Detail & Related papers (2024-01-11T10:10:16Z) - Unsupervised Domain Adaptation for Self-Driving from Past Traversal
Features [69.47588461101925]
We propose a method to adapt 3D object detectors to new driving environments.
Our approach enhances LiDAR-based detection models using spatial quantized historical features.
Experiments on real-world datasets demonstrate significant improvements.
arXiv Detail & Related papers (2023-09-21T15:00:31Z) - SoftED: Metrics for Soft Evaluation of Time Series Event Detection [4.263111781491367]
Time series event detection methods are evaluated mainly by standard classification metrics that focus solely on detection accuracy.
Inaccuracy in detecting an event can often result from its preceding or delayed effects reflected in neighboring detections.
This paper introduces SoftED metrics, a new set of metrics designed for soft evaluating event detection methods.
arXiv Detail & Related papers (2023-04-02T03:27:31Z) - PULL: Reactive Log Anomaly Detection Based On Iterative PU Learning [58.85063149619348]
We propose PULL, an iterative log analysis method for reactive anomaly detection based on estimated failure time windows.
Our evaluation shows that PULL consistently outperforms ten benchmark baselines across three different datasets.
arXiv Detail & Related papers (2023-01-25T16:34:43Z) - A data-centric weak supervised learning for highway traffic incident
detection [1.0323063834827415]
We focus on a data-centric approach to improve the accuracy and reduce the false alarm rate of traffic incident detection on highways.
We develop a weak supervised learning workflow to generate high-quality training labels for the incident data without the ground truth labels.
Overall, we show that our proposed weak supervised learning workflow achieves a high incident detection rate (0.90) and low false alarm rate (0.08)
arXiv Detail & Related papers (2021-12-17T22:14:47Z) - 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) - Robust Event Classification Using Imperfect Real-world PMU Data [58.26737360525643]
We study robust event classification using imperfect real-world phasor measurement unit (PMU) data.
We develop a novel machine learning framework for training robust event classifiers.
arXiv Detail & Related papers (2021-10-19T17:41:43Z) - Automatic Detection of Major Freeway Congestion Events Using Wireless
Traffic Sensor Data: A Machine Learning Approach [0.0]
This paper introduces a machine learning based approach for reliable detection and characterization of highway traffic congestion events.
The speed data is initially time-windowed by a ten-hour long sliding window and fed into three Neural Networks.
The sliding window captures each slowdown event multiple times and results in increased confidence in congestion detection.
arXiv Detail & Related papers (2020-07-09T21:38:45Z) - An Intelligent and Time-Efficient DDoS Identification Framework for
Real-Time Enterprise Networks SAD-F: Spark Based Anomaly Detection Framework [0.5811502603310248]
We will be exploring security analytic techniques for DDoS anomaly detection using different machine learning techniques.
In this paper, we are proposing a novel approach which deals with real traffic as input to the system.
We study and compare the performance factor of our proposed framework on three different testbeds.
arXiv Detail & Related papers (2020-01-21T06:05:48Z)
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.