DETECTION OF WHALES USING DEEP LEARNING METHODS AND NEURAL NETWORKS

Authors

  • Saheb Ghosh Department of Computer Science, VIT University, Chennai, Tamil Nadu, India.
  • Sathis Kumar B Department of Computer Science, VIT University, Chennai, Tamil Nadu, India.
  • Kathir Deivanai Department of Computer Science, VIT University, Chennai, Tamil Nadu, India.

DOI:

https://doi.org/10.22159/ajpcr.2017.v10s1.20767

Keywords:

Deep learning, Whale detection, Neural network, Machine learning

Abstract

Deep learning methods are a great machine learning technique which is mostly used in artificial neural networks for pattern recognition. This project is to identify the Whales from under water Bioacoustics network using an efficient algorithm and data model, so that location of the whales can be send to the Ships travelling in the same region in order to avoid collision with the whale or disturbing their natural habitat as much as possible. This paper shows application of unsupervised machine learning techniques with help of deep belief network and manual feature extraction model for better results.

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Published

01-04-2017

How to Cite

Ghosh, S., S. K. B, and K. Deivanai. “DETECTION OF WHALES USING DEEP LEARNING METHODS AND NEURAL NETWORKS”. Asian Journal of Pharmaceutical and Clinical Research, vol. 10, no. 13, Apr. 2017, pp. 489-94, doi:10.22159/ajpcr.2017.v10s1.20767.

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Original Article(s)