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Temporal 3D RetinaNet for fish detection

机译:用于鱼检测的颞3d视黄猫

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摘要

Automatic detection and tracking of fish provides valuable information for marine life science. Deep convolutional networks have been applied with some success but performance is affected by challenging imaging conditions including complex background, variation of light and the low visibility of the underwater environment. Existing works including Fast R-CNN and RetinaNet rely on single frame fish detection and suffer noisy and unreliable detections. In this paper, we propose and examine two 3D deep learning networks using temporal features to improve fish detection performance. The first one called 3D-backbone RetinaNet based 3D ResNet for temporal information is found worse than 2D RetinaNet. The second one called 3D-subnets RetinaNet based on 3D Regression subnet and Classification subnet to extract the temporal information is found better than 2D RetinaNet. To validating the performance of these networks, we also created a new fish data set which will be made publicly available with codes of the proposed networks.
机译:自动检测和鱼类的跟踪提供了海洋生命科学的有价值的信息。深卷积网络已经施加了一些成功,但性能受到挑战的成像条件包括复杂背景,光变化和水下环境的低能见度的影响。现有工程,包括快速R-CNN和RetinaNet依靠单帧鱼检测和遭受嘈杂和不可靠的检测。在本文中,我们提出并探讨使用时间功能,以提高鱼的检测性能两个3D深度学习网络。基于3D RESNET的时间信息,所谓的3D骨干RetinaNet第一个是比2D RetinaNet发现更糟。第二个所谓的3D子网RetinaNet基于三维回归子网和子网分类提取时间信息优于2D RetinaNet发现。为了验证这些网络的性能,我们还创建了将公开提供所提出的网络代码的新鱼的数据集。

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