The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm
Fish Hunger behaviour is essential in determining the fish feeding routine, particularly for fish farmers. The inability to provide accurate feeding routines (under-feeding or overfeeding) may lead the death of the fish and consequently inhibits the quantity of the fish produced. Moreover, the exces...
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Format: | Conference or Workshop Item |
Language: | English |
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IOP Publishing Ltd
2018
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Online Access: | http://umpir.ump.edu.my/id/eprint/21439/7/The%20classification%20of%20hunger%20behaviour%20of%20Lates%20Calcarifer.pdf |
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author | Zahari, Taha M. A. M., Razman Ahmad Shahrizan, Abdul Ghani A. P. P., Abdul Majeed R. M., Musa F. A., Adnan M. F., Sallehudin Y., Mukai |
author_facet | Zahari, Taha M. A. M., Razman Ahmad Shahrizan, Abdul Ghani A. P. P., Abdul Majeed R. M., Musa F. A., Adnan M. F., Sallehudin Y., Mukai |
author_sort | Zahari, Taha |
collection | UMP |
description | Fish Hunger behaviour is essential in determining the fish feeding routine, particularly for fish farmers. The inability to provide accurate feeding routines (under-feeding or overfeeding) may lead the death of the fish and consequently inhibits the quantity of the fish produced. Moreover, the excessive food that is not consumed by the fish will be dissolved in the water and accordingly reduce the water quality through the reduction of oxygen quantity. This problem also leads the death of the fish or even spur fish diseases. In the present study, a correlation of Barramundi fish-school behaviour with hunger condition through the hybrid data integration of image processing technique is established. The behaviour is clustered with respect to the position of the school size as well as the school density of the fish before feeding, during feeding and after feeding. The clustered fish behaviour is then classified through k-Nearest Neighbour (k-NN) learning algorithm. Three different variations of the algorithm namely cosine, cubic and weighted are assessed on its ability to classify the aforementioned fish hunger behaviour. It was found from the study that the weighted k-NN variation provides the best classification with an accuracy of 86.5%. Therefore, it could be concluded that the proposed integration technique may assist fish farmers in ascertaining fish feeding routine. |
first_indexed | 2024-03-06T12:24:31Z |
format | Conference or Workshop Item |
id | UMPir21439 |
institution | Universiti Malaysia Pahang |
language | English |
last_indexed | 2024-03-06T12:24:31Z |
publishDate | 2018 |
publisher | IOP Publishing Ltd |
record_format | dspace |
spelling | UMPir214392019-12-09T04:18:33Z http://umpir.ump.edu.my/id/eprint/21439/ The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm Zahari, Taha M. A. M., Razman Ahmad Shahrizan, Abdul Ghani A. P. P., Abdul Majeed R. M., Musa F. A., Adnan M. F., Sallehudin Y., Mukai TS Manufactures Fish Hunger behaviour is essential in determining the fish feeding routine, particularly for fish farmers. The inability to provide accurate feeding routines (under-feeding or overfeeding) may lead the death of the fish and consequently inhibits the quantity of the fish produced. Moreover, the excessive food that is not consumed by the fish will be dissolved in the water and accordingly reduce the water quality through the reduction of oxygen quantity. This problem also leads the death of the fish or even spur fish diseases. In the present study, a correlation of Barramundi fish-school behaviour with hunger condition through the hybrid data integration of image processing technique is established. The behaviour is clustered with respect to the position of the school size as well as the school density of the fish before feeding, during feeding and after feeding. The clustered fish behaviour is then classified through k-Nearest Neighbour (k-NN) learning algorithm. Three different variations of the algorithm namely cosine, cubic and weighted are assessed on its ability to classify the aforementioned fish hunger behaviour. It was found from the study that the weighted k-NN variation provides the best classification with an accuracy of 86.5%. Therefore, it could be concluded that the proposed integration technique may assist fish farmers in ascertaining fish feeding routine. IOP Publishing Ltd 2018-04 Conference or Workshop Item PeerReviewed pdf en cc_by http://umpir.ump.edu.my/id/eprint/21439/7/The%20classification%20of%20hunger%20behaviour%20of%20Lates%20Calcarifer.pdf Zahari, Taha and M. A. M., Razman and Ahmad Shahrizan, Abdul Ghani and A. P. P., Abdul Majeed and R. M., Musa and F. A., Adnan and M. F., Sallehudin and Y., Mukai (2018) The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm. In: IOP Conference Series: Materials Science and Engineering, International Conference on Innovative Technology, Engineering and Sciences 2018 (iCITES 2018) , 1-2 March 2018 , Universiti Malaysia Pahang (UMP) Pekan Campus Library, Malaysia. pp. 1-5., 342 (012017). ISSN 1757-8981 (Published) https://doi.org/10.1088/1757-899X/342/1/012017 |
spellingShingle | TS Manufactures Zahari, Taha M. A. M., Razman Ahmad Shahrizan, Abdul Ghani A. P. P., Abdul Majeed R. M., Musa F. A., Adnan M. F., Sallehudin Y., Mukai The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm |
title | The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm |
title_full | The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm |
title_fullStr | The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm |
title_full_unstemmed | The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm |
title_short | The classification of hunger behaviour of Lates Calcarifer through the integration of image processing technique and k-Nearest Neighbour learning algorithm |
title_sort | classification of hunger behaviour of lates calcarifer through the integration of image processing technique and k nearest neighbour learning algorithm |
topic | TS Manufactures |
url | http://umpir.ump.edu.my/id/eprint/21439/7/The%20classification%20of%20hunger%20behaviour%20of%20Lates%20Calcarifer.pdf |
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