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Automatic Hierarchical Classification of Kelps Using Deep Residual Features

机译:使用深度残差功能对海带进行自动分层分类

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摘要

Across the globe, remote image data is rapidly being collected for the assessment of benthic communities from shallow to extremely deep waters on continental slopes to the abyssal seas. Exploiting this data is presently limited by the time it takes for experts to identify organisms found in these images. With this limitation in mind, a large effort has been made globally to introduce automation and machine learning algorithms to accelerate both classification and assessment of marine benthic biota. One major issue lies with organisms that move with swell and currents, such as kelps. This paper presents an automatic hierarchical classification method local binary classification as opposed to the conventional flat classification to classify kelps in images collected by autonomous underwater vehicles. The proposed kelp classification approach exploits learned feature representations extracted from deep residual networks. We show that these generic features outperform the traditional off-the-shelf CNN features and the conventional hand-crafted features. Experiments also demonstrate that the hierarchical classification method outperforms the traditional parallel multi-class classifications by a significant margin (90.0% vs. 57.6% and 77.2% vs. 59.0%) on Benthoz15 and Rottnest datasets respectively. Furthermore, we compare different hierarchical classification approaches and experimentally show that the sibling hierarchical training approach outperforms the inclusive hierarchical approach by a significant margin. We also report an application of our proposed method to study the change in kelp cover over time for annually repeated AUV surveys.
机译:在全球范围内,正在迅速收集远程图像数据,以评估底栖生物群落,从大陆斜坡上的浅水到极深水域再到深海。目前,利用这些数据受到专家识别这些图像中发现的生物所花费的时间的限制。考虑到这一局限性,全球已投入大量精力来引入自动化和机器学习算法,以加快海洋底栖生物群的分类和评估。一个主要问题在于海藻等随浪潮涌动的生物。与传统的平面分类相反,本文提出了一种自动分层分类方法的局部二进制分类方法,可以对自动水下航行器收集的图像中的海藻进行分类。提出的海带分类方法利用从深度残差网络中提取的学习特征表示。我们证明了这些通用功能优于传统的现成CNN功能和传统的手工功能。实验还表明,在Benthoz15和Rottnest数据集上,分层分类方法分别优于传统的并行多类分类(分别为90.0%对57.6%和77.2%对59.0%)。此外,我们比较了不同的层次分类方法,并通过实验证明了同级层次训练方法明显优于包容性层次方法。我们还报告了我们提出的方法的应用,以研究海带覆盖物随时间的变化,用于每年重复进行的AUV调查。

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