@inproceedings{311268b407964870a39f12aa664dfba6,
title = "Texture recognition for frog identification",
abstract = "This paper describes a visual processing technique for automatic frog (Xenopus Laevis sp.) localization and identification. The problem of frog identification is to process and classify an unknown frog image to determine the identity which is recorded previously on an image database. The frog skin pattern (i.e. texture) provides a unique feature for identification. Hence, the study investigates three different kind of features (i.e. Gabor filters, granulometry, threshold set compactness) to extract texture information. The classifier is built on nearest neighbor principle; it assigns the query feature to the database feature which has the minimum distance. Hence, the study investigates different distance measures and compares their performance. The detailed results show that the most successful feature and distance measure is granulometry and weighted L1 norm for the frog identification using skin texture features.",
keywords = "Frog identification, Image processing, Texture recognition, Xenopus laevis",
author = "Flavio Cannav{\`o} and Giuseppe Nunnari and Izzet Kale and Tek, {F. Boray}",
year = "2012",
doi = "10.1145/2390832.2390839",
language = "English",
isbn = "9781450315883",
series = "MAED 2012 - Proceedings of the 2012 ACM Workshop on Multimedia Analysis for Ecological Data, Co-located with ACM Multimedia 2012",
pages = "25--29",
booktitle = "MAED 2012 - Proceedings of the 2012 ACM Workshop on Multimedia Analysis for Ecological Data, Co-located with ACM Multimedia 2012",
note = "1st ACM International Workshop on Multimedia Analysis for Ecological Data, MAED 2012, Held within ACM Multimedia 2012 ; Conference date: 02-11-2012 Through 02-11-2012",
}