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Automatic plankton image classification combining multiple view features via multiple kernel learning

机译:通过多个内核学习组合多视图功能的自动浮游乐器分类

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摘要

Abstract Background Plankton, including phytoplankton and zooplankton, are the main source of food for organisms in the ocean and form the base of marine food chain. As the fundamental components of marine ecosystems, plankton is very sensitive to environment changes, and the study of plankton abundance and distribution is crucial, in order to understand environment changes and protect marine ecosystems. This study was carried out to develop an extensive applicable plankton classification system with high accuracy for the increasing number of various imaging devices. Literature shows that most plankton image classification systems were limited to only one specific imaging device and a relatively narrow taxonomic scope. The real practical system for automatic plankton classification is even non-existent and this study is partly to fill this gap. Results Inspired by the analysis of literature and development of technology, we focused on the requirements of practical application and proposed an automatic system for plankton image classification combining multiple view features via multiple kernel learning (MKL). For one thing, in order to describe the biomorphic characteristics of plankton more completely and comprehensively, we combined general features with robust features, especially by adding features like Inner-Distance Shape Context for morphological representation. For another, we divided all the features into different types from multiple views and feed them to multiple classifiers instead of only one by combining different kernel matrices computed from different types of features optimally via multiple kernel learning. Moreover, we also applied feature selection method to choose the optimal feature subsets from redundant features for satisfying different datasets from different imaging devices. We implemented our proposed classification system on three different datasets across more than 20 categories from phytoplankton to zooplankton. The experimental results validated that our system outperforms state-of-the-art plankton image classification systems in terms of accuracy and robustness. Conclusions This study demonstrated automatic plankton image classification system combining multiple view features using multiple kernel learning. The results indicated that multiple view features combined by NLMKL using three kernel functions (linear, polynomial and Gaussian kernel functions) can describe and use information of features better so that achieve a higher classification accuracy.
机译:摘要背景浮游生物,包括Phytoplankton和Zooplankton,是海洋中生物体的主要来源,并形成海洋食品链的基础。作为海洋生态系统的基本组成部分,浮游生物对环境变化非常敏感,浮游生物丰富和分布的研究至关重要,以了解环境变化和保护海洋生态系统。本研究进行了开发广泛适用的Plankton分类系统,以高精度地用于越来越多的各种成像装置。文献表明,大多数普拉克顿图像分类系统仅限于一个特定的成像装置和相对窄的分类范围。自动浮游生物分类的真正实际系统甚至不存在,这项研究部分是填补这种差距。结果灵感来自于文献和技术开发的分析,我们专注于实际应用的要求,并提出了一种通过多个内核学习(MKL)组合多视图特征的浮游动物图像分类的自动系统。对于一件事,为了更完全和全面地描述Plankton的生物形态特征,我们将一般特征组合具有鲁棒特征,尤其是通过为形态表示添加等内部距离形状的特征来添加特征。对于另一个,我们将所有特征从多个视图划分为不同类型,并通过组合通过多种内核学习最佳地组合从不同类型的特征计算的不同内核矩阵来馈送它们到多个分类器。此外,我们还应用了特征选择方法来选择来自冗余功能的最佳特征子集,以满足来自不同的成像设备的不同数据集。我们在三个不同的数据集中实施了我们提出的分类系统,超过了20多个类别的来自Phytoplankton到Zooplankton。实验结果验证了我们的系统在准确性和鲁棒性方面优于最先进的浮游动物图像分类系统。结论本研究展示了使用多个内核学习的多个视图特征的自动浮游动物图像分类系统。结果表明,使用三个内核函数(线性,多项式和高斯核心)组合的多视图特征可以更好地描述和使用具有更好的功能的信息,以实现更高的分类精度。

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