Event Detection via Probability Density Function Regression
- URL: http://arxiv.org/abs/2408.12792v1
- Date: Fri, 23 Aug 2024 01:58:56 GMT
- Title: Event Detection via Probability Density Function Regression
- Authors: Clark Peng, Tolga Dinçer,
- Abstract summary: 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.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the domain of time series analysis, particularly in event detection tasks, current methodologies predominantly rely on segmentation-based approaches, which predict the class label for each individual timesteps and use the changepoints of these labels to detect events. However, these approaches may not effectively detect the precise onset and offset of events within the data and suffer from class imbalance problems. 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 rather than class labels across the entire time series. The primary aim of this approach is to improve the accuracy of event detection methods, particularly for long-duration events where identifying the onset and offset is more critical than classifying individual event states. We demonstrate that regression-based approaches outperform segmentation-based methods across various state-of-the-art baseline networks and datasets, offering a more effective solution for specific event detection tasks.
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