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Deep Metric Learning and Image Classification with Nearest Neighbour Gaussian Kernels

机译:与最近邻居高斯内核的深度度量学习和图像分类

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We present a Gaussian kernel loss function and training algorithm for convolutional neural networks that can be directly applied to both distance metric learning and image classification problems. Our method treats all training features from a deep neural network as Gaussian kernel centres and computes loss by summing the influence of a feature's nearby centres in the feature embedding space. Our approach is made scalable by treating it as an approximate nearest neighbour search problem. We show how to make end-to-end learning feasible, resulting in a well formed embedding space, in which semantically related instances are likely to be located near one another, regardless of whether or not the network was trained on those classes. Our approach outperforms state-of-the-art deep metric learning approaches on embedding learning challenges, as well as conventional softmax classification on several datasets.
机译:我们为卷积神经网络提供了高斯核损耗功能和培训算法,可以直接应用于距离度量学习和图像分类问题。我们的方法将深度神经网络的所有培训特征视为高斯核心中心,并通过概括在嵌入空间中的特征附近中心的影响力来计算损失。我们的方法是通过将其视为最近邻邻搜索问题来扩展。我们展示了如何使端到端的学习可行,导致嵌入空间良好的嵌入空间,其中语义相关的实例可能位于彼此附近,无论网络是否在这些类上培训。我们的方法优于嵌入学习挑战的最先进的深度度量学习方法,以及在多个数据集上的传统Softmax分类。

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