A Survey on the Deployability of Semantic Segmentation Networks for Fluvial Navigation

Reeve Lambert, Jianwen Li, Jalil Chavez-Galaviz, N. Mahmoudian
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Abstract

Neural network semantic image segmentation has developed into a powerful tool for autonomous navigational environmental comprehension in complex environments. While semantic segmentation networks have seen ample applications in the ground domain, implementations in the surface water domain, especially fluvial (rivers and streams) deployments, have lagged behind due to training data and literature sparsity issues. To tackle this problem the publicly available River Obstacle Segmentation En-Route By USV Dataset (ROSEBUD) was recently published. The dataset provides unique rural fluvial training data for the water binary segmentation task to aid in fluvial scene au-tonomous navigation. Despite new dataset sources, there is still a need for studies on networks that excel at both under-standing marine and fluvial scenes and efficiently operating on the computationally limited embedded systems that are common on autonomous marine platforms like ASVs. To provide insight into state-of-the-art network capabilities on embedded systems a survey of twelve networks encompassing 8 different architectures has been developed. Networks were trained and tested on a combination of three existing datasets, including the ROSEBUD dataset, and then implemented on an NVIDIA Jetson Nano to evaluate performance on real-world hardware. The survey's results layout recommendations for networks to use in autonomous applications in complex and fast-moving environments relative to network performance and inference speed.
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河流导航语义分割网络可部署性研究
神经网络语义图像分割已成为复杂环境下自主导航环境理解的有力工具。虽然语义分割网络已经在地面领域得到了广泛的应用,但由于训练数据和文献稀疏性问题,在地表水领域的实现,特别是河流和溪流的部署,已经落后。为了解决这个问题,最近发布了USV数据集(ROSEBUD)的公开河流障碍物分割。该数据集为水体二值分割任务提供了独特的农村河流训练数据,有助于河流场景自主导航。尽管有新的数据集来源,但仍然需要研究既能理解海洋和河流场景,又能在asv等自主海洋平台上常见的计算有限的嵌入式系统上有效运行的网络。为了深入了解嵌入式系统上最先进的网络功能,我们对包含8种不同架构的12个网络进行了调查。网络在三个现有数据集(包括ROSEBUD数据集)的组合上进行训练和测试,然后在NVIDIA Jetson Nano上实现,以评估实际硬件上的性能。该调查的结果布局建议网络在复杂和快速移动环境中的自主应用中使用,相对于网络性能和推理速度。
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