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Bay Lobsters Moulting Stage Analysis Based on High-Order Texture Descriptor

机译:基于高阶纹理描述符的海湾龙虾换羽期分析

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In this paper, we introduce the world's first method to automatically classify the moulting stage of Bay lobsters, formally known as Thenus orientális, in a controlled environment. Our classification approach only requires top view images of exoskeleton of bay lobsters. We analyzed the texture of exoskeleton to categorize into normal, moulting stage, and freshly moulted classes. To meet the efficiency and robustness requirements of production platform, we leverage traditional approach such as Local Binary Pattern and Local Derivative Pattern with enhanced encoding scheme for underwater imagery. We also build a dataset of 315 bay lobster images captured at the controlled under water environment. Experimental results on this dataset demonstrated that the proposed method can effectively classify bay lobsters with a high accuracy.
机译:在本文中,我们介绍了世界上第一种在受控环境中自动对海湾龙虾蜕皮阶段进行分类的方法,正式名称为Thenusorientális。我们的分类方法只需要海湾龙虾外骨骼的俯视图。我们分析了外骨骼的纹理,将其分为正常,换羽阶段和刚换羽的类别。为了满足生产平台的效率和鲁棒性要求,我们利用传统方法(例如本地二进制模式和本地派生模式)以及用于水下图像的增强编码方案。我们还建立了在受控水环境下捕获的315个海湾龙虾图像的数据集。在该数据集上的实验结果表明,该方法可以有效地对海湾龙虾进行高精度分类。

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