A novel density peak fuzzy clustering algorithm for moving vehicles using traffic radar

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Abstract

The detection of adjacent vehicles in highway scenes has the problem of inaccurate clustering results. In order to solve this problem, this paper proposes a new clustering algorithm, namely Spindle-based Density Peak Fuzzy Clustering (SDPFC) algorithm. Its main feature is to use the density peak clustering algorithm to perform initial clustering to obtain the number of clusters and the cluster center of each cluster. The final clustering result is obtained by a fuzzy clustering algorithm based on the spindle update. The experimental data are the radar echo signal collected in the real highway scenes. Compared with the DBSCAN, FCM, and K-Means algorithms, the algorithm has higher clustering accuracy in certain scenes. The average clustering accuracy of SDPFC can reach more than 95%. It is also proved that the proposed algorithm has strong robustness in certain highway scenes.

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Cao, L., Liu, Y., Wang, D., Wang, T., & Fu, C. (2020). A novel density peak fuzzy clustering algorithm for moving vehicles using traffic radar. Electronics (Switzerland), 9(1). https://doi.org/10.3390/electronics9010046

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