The promise of machine learning in the Risso’s dolphin Grampus griseus photo-identification

R. Maglietta, A. Bruno, V. Renó, G. Dimauro, E. Stella, C. Fanizza, Stefano Bellomo, G. Cipriano, A. Tursi, R. Carlucci
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引用次数: 7

Abstract

Photo-identification (photo-ID) studies are strategic to fill the gap of knowledge of data deficient species such as Risso’s dolphin. Unfortunately, the photo-ID process is very time consuming and strongly depends on the user-ability. Some photo-ID algorithms are available, which can, automatically or semi-automatically, find the closest match between the dolphin in the query and a catalogue of previously sighted dolphins. However the limitation of these algorithms is that in any case they will return a prevision of the dolphin identity, in other words these can not identify the individuals never sighted before, i.e. unknown dolphins. Hence the automation of the photo-ID process through the use of innovative algorithms is still needed. In this paper the opportunity of employing machine learning strategies for the automated photo-ID of Risso’s dolphin is investigated. In particular the performances of RUSBoost algorithm result to be very good in identifying the unknown dolphins, even if in general these depend on the available data for training the model. Experimental results highlight the great potential of machine learning in the automation of photo-ID process, as well as focus on the need of collecting more and more data in order to perform a more effective data analysis.
Risso海豚grpus griseus照片识别中机器学习的前景
照片识别(photo-ID)研究是填补数据缺乏物种(如Risso海豚)知识空白的战略。不幸的是,照片识别过程非常耗时,而且很大程度上取决于用户的可操作性。一些照片识别算法可以自动或半自动地找到查询中的海豚与以前见过的海豚目录之间最接近的匹配。然而,这些算法的局限性在于,在任何情况下,它们都会返回海豚身份的预览,换句话说,这些算法无法识别以前从未见过的个体,即未知的海豚。因此,仍然需要通过使用创新算法来实现照片识别过程的自动化。本文探讨了采用机器学习策略进行里索海豚照片自动识别的可能性。特别是RUSBoost算法在识别未知海豚方面的表现非常好,即使通常这些依赖于训练模型的可用数据。实验结果突出了机器学习在照片识别过程自动化中的巨大潜力,同时也强调了为了进行更有效的数据分析,需要收集越来越多的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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