Abstract:
The affinity propagation clustering (APC) algorithm is popular for fingerprint database clustering because it can cluster without pre-defining the number of clusters. How...Show MoreMetadata
Abstract:
The affinity propagation clustering (APC) algorithm is popular for fingerprint database clustering because it can cluster without pre-defining the number of clusters. However, the clustering performance of the APC algorithm heavily depends on the chosen fingerprint similarity metric, with distance-based metrics being the most commonly used. Despite its popularity, the APC algorithm lacks comprehensive research on how distance-based metrics affect clustering performance. This emphasizes the need for a better understanding of how these metrics influence its clustering performance, particularly in fingerprint databases. This paper investigates the impact of various distance-based fingerprint similarity metrics on the clustering performance of the APC algorithm. It identifies the best fingerprint similarity metric for optimal clustering performance for a given fingerprint database. The analysis is conducted across five experimentally generated online fingerprint databases, utilizing seven distance-based metrics: Euclidean, squared Euclidean, Manhattan, Spearman, cosine, Canberra, and Chebyshev distances. Using the silhouette score as the performance metric, the simulation results indicate that structural characteristics of the fingerprint database, such as the distribution of fingerprint vectors, play a key role in selecting the best fingerprint similarity metric. However, Euclidean and Manhattan distances are generally the preferable choices for use as fingerprint similarity metrics for the APC algorithm across most fingerprint databases, regardless of their structural characteristics. It is recommended that other factors, such as computational intensity and the presence or absence of outliers, be considered alongside the structural characteristics of the fingerprint database when choosing the appropriate fingerprint similarity metric for maximum clustering performance.
Published in: IEEE Open Journal of Signal Processing ( Volume: 5)
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- IEEE Keywords
- Index Terms
- Similarity Measure ,
- Clustering Performance ,
- Fingerprint Similarity ,
- Fingerprint Database ,
- Affinity Propagation Clustering ,
- Structural Features ,
- Performance Of Algorithm ,
- Clustering Algorithm ,
- Manhattan Distance ,
- Presence Of Outliers ,
- Computational Intensity ,
- Silhouette Score ,
- Absence Of Outliers ,
- Higher Density ,
- Absolute Difference ,
- Square Root ,
- Section Of The Paper ,
- Similarity Matrix ,
- Distance Metrics ,
- Review Of Work ,
- Indoor Navigation ,
- Clustering Methodology ,
- Clustering Quality ,
- Indoor Localization ,
- Description Of Metrics ,
- Repeat Steps
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Similarity Measure ,
- Clustering Performance ,
- Fingerprint Similarity ,
- Fingerprint Database ,
- Affinity Propagation Clustering ,
- Structural Features ,
- Performance Of Algorithm ,
- Clustering Algorithm ,
- Manhattan Distance ,
- Presence Of Outliers ,
- Computational Intensity ,
- Silhouette Score ,
- Absence Of Outliers ,
- Higher Density ,
- Absolute Difference ,
- Square Root ,
- Section Of The Paper ,
- Similarity Matrix ,
- Distance Metrics ,
- Review Of Work ,
- Indoor Navigation ,
- Clustering Methodology ,
- Clustering Quality ,
- Indoor Localization ,
- Description Of Metrics ,
- Repeat Steps
- Author Keywords