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Recognizing Fish Species Captured Live on Wild Sea Surface in Videos by Deep Metric Learning with a Temporal Constraint

机译:通过深度度量学习,识别捕获的鱼类在野生海面上,通过深度度量学习与时间约束

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Recognizing fish species captured live on wild sea surface in videos is a challenging task due to the deformation of fish shape, self-occlusion of body parts and similar texture between different fish classes. To address these issues, we propose a fine-grained image classification method based on a deep convolution neural network (CNN) trained by an innovative metric learning scheme with a temporal constraint. By introducing the temporal constraint in metric learning, we help the network to learn a feature embedding which implicitly takes the shape and pose changes of fish into account. Besides, for each class, we learn the representative features discriminatively by introducing an intermediate layer in the CNN before the classifier. In testing stage, we first aggregate the features of a fish from each frame into several clips in the feature space, send the clips to the classifier and then perform weighted majority vote for the final classification. The experimental results show that our approach outperforms the conventional softmax classification on our rail-fishing dataset.
机译:识别捕获的鱼类在野生海面上捕获的鱼类在视频中是一个具有挑战性的任务,因为鱼形状的变形,身体部位的自我闭塞和不同鱼类之间的类似纹理。为了解决这些问题,我们提出了一种基于具有时间约束的创新度量学习方案的深度卷积神经网络(CNN)的细粒度图像分类方法。通过在度量学习中引入时间约束,我们帮助网络了解一个特征嵌入,隐含地占据鱼类的形状和姿势变化。此外,对于每个类,我们通过在分类器之前引入CNN中的中间层来判别学习代表性特征。在测试阶段,我们首先将鱼类的特征从每个帧聚合到要素空间中的几个剪辑中,将剪辑发送到分类器,然后对最终分类执行加权多数投票。实验结果表明,我们的方法在我们的轨道钓鱼数据集中优于传统的Softmax分类。

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