WILD ANIMAL DETECTION USING MULTI-CLUSTER FEATURE SELECTION

Authors

  • Keerthana S Dept. of Computer Science, Sri Ramakrishna College of Arts and Science For Women, Coimbatore, India.
  • shyla EM Dept. of Computer Science, Sri Ramakrishna College of Arts and Science For Women, Coimbatore, India.

DOI:

https://doi.org/10.26438/ijcse/v6i10.628632

Keywords:

Dictionary Learning, Multi-Cluster Feature Selection, Wild animal detection, Spectral analysis

Abstract

Wild animal detection helps wildlife researchers to analyze and study wild animal habitat and behavior. Discriminative Feature-oriented Dictionary Learning (DFDL) was utilized for learning discriminative features of positive images that have animals present in positive class, in addition of negative images that do not have animals present in that class. But, this approach has low performance for detection of visual wild animals. Hence, in this paper, Multi-Cluster Feature Selection (MCFS) is proposed for unsupervised feature selection and wild animal detection. Those features are chosen, which the multi-cluster structure of the data is well preserved. Based on spectral analysis approaches, the proposed method suggests a principled manner for calculating the correlations among various features without label information. Thus, the proposed technique handles the data with multiple cluster structure. The experimental results show that the proposed approach provides the better results

References

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Published

2025-11-17
CITATION
DOI: 10.26438/ijcse/v6i10.628632
Published: 2025-11-17

How to Cite

[1]
S. Keerthana and E. M. shyla, “WILD ANIMAL DETECTION USING MULTI-CLUSTER FEATURE SELECTION”, Int. J. Comp. Sci. Eng., vol. 6, no. 10, pp. 628–632, Nov. 2025.

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Section

Research Article