A Novel Method to Select Hyperparameters of the DBSCAN Algorithm for RADAR Applications

2024-26-0030

01/16/2024

Features
Event
Symposium on International Automotive Technology
Authors Abstract
Content
As the automotive industry is coming up with various ADAS solutions, RADAR is playing an important role. There are many parameters concerning RADAR detections to acknowledge. Unsupervised Clustering methods are used for RADAR applications. DBSCAN clustering method which is widely used for RADAR applications. The existing clustering DBSCAN is not aligned very well with its hyperparameters such as epsilon (the radius within which each data point checks the density) and minimum points (minimum data points required within a circle to check for core point) for which a calibration is needed. In this paper, different methods to choose the hyperparameters of DBSCAN are compared and verified with different clustering evaluation criteria. A novel method to select hyperparameters of the DBSCAN algorithm is presented with the paper. For testing the given algorithm, ground truth data is collected, and the results are verified with MATLAB-Simulink.
Meta TagsDetails
DOI
https://doi.org/10.4271/2024-26-0030
Pages
8
Citation
Payghan, V., Prajapati, M., and Chauhan, A., "A Novel Method to Select Hyperparameters of the DBSCAN Algorithm for RADAR Applications," SAE Technical Paper 2024-26-0030, 2024, https://doi.org/10.4271/2024-26-0030.
Additional Details
Publisher
Published
Jan 16
Product Code
2024-26-0030
Content Type
Technical Paper
Language
English