Avoiding Post-Processing with Event-Based Detection in Biomedical
Signals
- URL: http://arxiv.org/abs/2209.11007v2
- Date: Fri, 7 Jul 2023 12:24:34 GMT
- Title: Avoiding Post-Processing with Event-Based Detection in Biomedical
Signals
- Authors: Nick Seeuws, Maarten De Vos, Alexander Bertrand
- Abstract summary: We propose an event-based modeling framework that directly works with events as learning targets.
We show that event-based modeling (without post-processing) performs on par with or better than epoch-based modeling with extensive post-processing.
- Score: 69.34035527763916
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Objective: Finding events of interest is a common task in biomedical signal
processing. The detection of epileptic seizures and signal artefacts are two
key examples. Epoch-based classification is the typical machine learning
framework to detect such signal events because of the straightforward
application of classical machine learning techniques. Usually, post-processing
is required to achieve good performance and enforce temporal dependencies.
Designing the right post-processing scheme to convert these classification
outputs into events is a tedious, and labor-intensive element of this
framework. Methods: We propose an event-based modeling framework that directly
works with events as learning targets, stepping away from ad-hoc
post-processing schemes to turn model outputs into events. We illustrate the
practical power of this framework on simulated data and real-world data,
comparing it to epoch-based modeling approaches. Results: We show that
event-based modeling (without post-processing) performs on par with or better
than epoch-based modeling with extensive post-processing. Conclusion: These
results show the power of treating events as direct learning targets, instead
of using ad-hoc post-processing to obtain them, severely reducing design
effort. Significance: The event-based modeling framework can easily be applied
to other event detection problems in signal processing, removing the need for
intensive task-specific post-processing.
Related papers
- EventFlow: Forecasting Continuous-Time Event Data with Flow Matching [12.976042923229466]
We propose EventFlow, a non-autoregressive generative model for temporal point processes.
Our model builds on the flow matching framework in order to directly learn joint distributions over event times, side-stepping the autoregressive process.
arXiv Detail & Related papers (2024-10-09T20:57:00Z) - Detecting Anomalous Events in Object-centric Business Processes via
Graph Neural Networks [55.583478485027]
This study proposes a novel framework for anomaly detection in business processes.
We first reconstruct the process dependencies of the object-centric event logs as attributed graphs.
We then employ a graph convolutional autoencoder architecture to detect anomalous events.
arXiv Detail & Related papers (2024-02-14T14:17:56Z) - Spatio-Temporal Point Process for Multiple Object Tracking [30.041104276095624]
Multiple Object Tracking (MOT) focuses on modeling the relationship of detected objects among consecutive frames and merge them into different trajectories.
We propose a novel framework that can effectively predict and mask-out noisy and confusing detection results before associating objects into trajectories.
arXiv Detail & Related papers (2023-02-05T18:14:08Z) - Semantic Pivoting Model for Effective Event Detection [19.205550116466604]
Event Detection aims to identify and classify mentions of event instances from unstructured articles.
Existing techniques for event detection only use homogeneous one-hot vectors to represent the event type classes, ignoring the fact that the semantic meaning of the types is important to the task.
We propose a Semantic Pivoting Model for Effective Event Detection (SPEED), which explicitly incorporates prior information during training and captures semantically meaningful correlations between input and events.
arXiv Detail & Related papers (2022-11-01T19:20:34Z) - CEP3: Community Event Prediction with Neural Point Process on Graph [59.434777403325604]
We propose a novel model combining Graph Neural Networks and Marked Temporal Point Process (MTPP)
Our experiments demonstrate the superior performance of our model in terms of both model accuracy and training efficiency.
arXiv Detail & Related papers (2022-05-21T15:30:25Z) - 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) - A Background-Agnostic Framework with Adversarial Training for Abnormal
Event Detection in Video [120.18562044084678]
Abnormal event detection in video is a complex computer vision problem that has attracted significant attention in recent years.
We propose a background-agnostic framework that learns from training videos containing only normal events.
arXiv Detail & Related papers (2020-08-27T18:39:24Z) - Process Discovery for Structured Program Synthesis [70.29027202357385]
A core task in process mining is process discovery which aims to learn an accurate process model from event log data.
In this paper, we propose to use (block-) structured programs directly as target process models.
We develop a novel bottom-up agglomerative approach to the discovery of such structured program process models.
arXiv Detail & Related papers (2020-08-13T10:33:10Z)
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.