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One-Shot Re-identification using Image Projections in Deep Triplet Convolutional Network

机译:深三重态卷积网络中使用图像投影的一击式重新识别

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Representation learning of images using deep neural networks have shown great results in classificational tasks. In case of instance recognition, or object re-identification other approaches are used. Siamese architectured convolutional networks were the first approach to learn from semantic distances, and give the similarity of two inputs. Triplet networks apply the triplet loss based on the furthest positive and the closest negative pair. In this paper we present a method to apply multi-directional image projections as an initial transformation to compress image data, whereafter the discriminative ability remains. After performing the training on vehicle images, the model is evaluated by measuring the one-shot classification accuracy.
机译:使用深度神经网络的图像表示学习已在分类任务中显示了出色的成果。在实例识别或对象重新识别的情况下,使用其他方法。暹罗体系的卷积网络是从语义距离学习的第一种方法,并给出了两个输入的相似性。三元组网络根据最远的正对和最接近的负对来应用三元组损失。在本文中,我们提出了一种将多方向图像投影作为初始转换来压缩图像数据的方法,此后仍具有判别能力。在对车辆图像进行训练之后,通过测量单次分类精度来评估模型。

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