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Classification of marine organisms in underwater images using CQ-HMAX biologically inspired color approach

机译:使用CQ-HMAX生物启发彩色方法对水下图像中的海洋生物进行分类

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In many coastal environments, particularly in tropical zones, coral reef ecosystems have exceptional biodiversity, contribute to coastal defense, provide unique and important habitats and valuable commercial resources. Assessment of environmental impacts on biodiversity in such areas are increasingly important to mitigate potential adverse effects on specific ecosystems. Visual classification of marine organisms is necessary for population estimates of individual species of corals or other benthic organisms. In this paper, we introduce a new image dataset of benthic organisms that are of different colors, shapes, scales, visibility and are taken from different viewpoints. We evaluate several different classification approaches on this dataset, and show that CQ-HMAX, our new biologically inspired approach to utilizing color information for object and scene recognition, that is inspired by the characteristics of color- and object-selective neurons in the high-level inferotemporal (IT) cortex of the primate visual system, results in better classification results in comparison with existing computational models such as support vectors machines, SIFT based approaches and the HMAX biologically inspired approach. We show that concatenating our model which encodes color information with the HMAX model which encodes grayscale shape information results in the highest classification accuracy.
机译:在许多沿海环境中,特别是在热带地区,珊瑚礁生态系统具有出色的生物多样性,有助于沿海防御,提供独特而重要的栖息地和宝贵的商业资源。评估这些地区对生物多样性的环境影响对于减轻对特定生态系统的潜在不利影响越来越重要。为了对珊瑚或其他底栖生物的单个物种进行种群估计,必须对海洋生物进行视觉分类。在本文中,我们介绍了一个新的底栖生物图像数据集,这些数据集具有不同的颜色,形状,比例,可见性,并且取自不同的观点。我们在此数据集上评估了几种不同的分类方法,并显示出CQ-HMAX,这是一种新的生物学启发方法,利用颜色信息进行对象和场景识别,该方法受到了高水平颜色和对象选择神经元特征的启发。与现有的计算模型(例如支持向量机,基于SIFT的方法和HMAX生物学启发的方法)相比,灵长类动物视觉系统的水平颞下(IT)皮质可提供更好的分类结果。我们表明,将我们的对颜色信息进行编码的模型与对灰度形状信息进行编码的HMAX模型进行串联可以得到最高的分类精度。

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