荧光和反射图像中珊瑚分类的深度融合网络

Uzair Nadeem, Bennamoun, Ferdous Sohel, R. Togneri
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引用次数: 3

摘要

珊瑚礁对海洋生态系统和渔业至关重要。珊瑚的自动分类对珊瑚礁的保存和研究至关重要。然而,珊瑚属之间的类内差异和类间相似性显著,以及水下光照的挑战,给自动分类带来了很大的阻碍。我们提出了一个端到端可训练的深度融合网络,用于从两种类型的图像中分类珊瑚。该网络同时输入反射率和荧光图像。它由三个分支组成:反射、荧光和集成。这些分支首先被单独训练,然后融合在一起。最后,对深度融合网络进行端到端训练,用于不同珊瑚属和其他非珊瑚类的分类。在具有挑战性的Eliat荧光珊瑚数据集上的实验表明,与其他方法相比,深度融合网络具有更高的分类精度。
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Deep Fusion Net for Coral Classification in Fluorescence and Reflectance Images
Coral reefs are vital for marine ecosystem and fishing industry. Automatic classification of corals is essential for the preservation and study of coral reefs. However, significant intra-class variations and inter-class similarity among coral genera, as well as the challenges of underwater illumination present a great hindrance for the automatic classification. We propose an end-to-end trainable Deep Fusion Net for the classification of corals from two types of images. The network takes two simultaneous inputs of reflectance and fluorescence images. It is composed of three branches: Reflectance, Fluorescence and Integration. The branches are first trained individually and then fused together. Finally, the Deep Fusion Net is trained end-to-end for the classification of different coral genera and other non-coral classes. Experiments on the challenging Eliat Fluorescence Coral dataset show that the Deep Fusion net achieves superior classification accuracy compared to other methods.
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