Time Varying Particle Data Feature Extraction and Tracking with Neural
Networks
- URL: http://arxiv.org/abs/2105.13240v1
- Date: Thu, 27 May 2021 15:38:14 GMT
- Title: Time Varying Particle Data Feature Extraction and Tracking with Neural
Networks
- Authors: Haoyu Li and Han-Wei Shen
- Abstract summary: We take a deep learning approach to create feature representations for scientific particle data to assist feature extraction and tracking.
We employ a deep learning model, which produces latent vectors to represent the relation between spatial locations and physical attributes in a local neighborhood.
To achieve fast feature tracking, the mean-shift tracking algorithm is applied in the feature space.
- Score: 20.825102707056647
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Analyzing particle data plays an important role in many scientific
applications such as fluid simulation, cosmology simulation and molecular
dynamics. While there exist methods that can perform feature extraction and
tracking for volumetric data, performing those tasks for particle data is more
challenging because of the lack of explicit connectivity information. Although
one may convert the particle data to volume first, this approach is at risk of
incurring error and increasing the size of the data. In this paper, we take a
deep learning approach to create feature representations for scientific
particle data to assist feature extraction and tracking. We employ a deep
learning model, which produces latent vectors to represent the relation between
spatial locations and physical attributes in a local neighborhood. With the
latent vectors, features can be extracted by clustering these vectors. To
achieve fast feature tracking, the mean-shift tracking algorithm is applied in
the feature space, which only requires inference of the latent vector for
selected regions of interest. We validate our approach using two datasets and
compare our method with other existing methods.
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