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Cascaded deep network systems with linked ensemble components for underwater fish detection in the wild

机译:级联的深网络系统,带有链接集合组件,用于野外水下鱼类检测

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We propose a fish detection system based on deep network architectures to robustly detect and count fish objects under a variety of benthic background and illumination conditions. The algorithm consists of an ensemble of Region-based Convolutional Neural Networks that are linked in a cascade structure by Long Short-Term Memory networks. The proposed network is efficiently trained as all components are jointly trained by backpropagation. We train and test our system for a dataset of 18 videos taken in the wild. In our dataset, there are around 20 to 100 fish objects per frame with many fish objects having small pixel areas (less than 900 square pixels). From a series of experiments and ablation tests, the proposed system preserves detection accuracy despite multi-scale distortions, cropping and varying background environments. We present analysis that shows how object localization accuracy is increased by an automatic correction mechanism in the deep networks cascaded ensemble structure. The correction mechanism rectifies any errors in the predictions as information progresses through the network cascade. Our findings in this experiment regarding ensemble system architectures can be generalized to other object detection applications.
机译:我们提出了一种基于深网络架构的鱼类检测系统,以鲁棒地检测和计算各种底栖背景和照明条件下的鱼类物体。该算法由基于区域的卷积神经网络的集合组成,该神经网络通过长短期存储网络在级联结构中链接。所提出的网络有效地接受培训,因为所有组件都是由BackPropagation共同训练的。我们培训并测试我们在野外拍摄的18个视频的数据集。在我们的数据集中,每帧约20到100个鱼对象,许多鱼对象具有小像素区域(小于900平方像素)。从一系列实验和消融测试中,尽管多尺度扭曲,裁剪和不同的背景环境,所提出的系统仍然保持检测准确性。我们提出了分析,表明对物体定位精度如何通过深网络级联集合结构中的自动校正机制增加。校正机构在预测中纠正了任何错误,因为信息通过网络级联进行了。我们在该实验中的研究结果可以推广到其他对象检测应用程序。

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