Coarse-to-Fine Deep Kernel Networks

H. Sahbi
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引用次数: 37

Abstract

In this paper, we address the issue of efficient computation in deep kernel networks. We propose a novel framework that reduces dramatically the complexity of evaluating these deep kernels. Our method is based on a coarse-to-fine cascade of networks designed for efficient computation; early stages of the cascade are cheap and reject many patterns efficiently while deep stages are more expensive and accurate. The design principle of these reduced complexity networks is based on a variant of the cross-entropy criterion that reduces the complexity of the networks in the cascade while preserving all the positive responses of the original kernel network. Experiments conducted - on the challenging and time demanding change detection task, on very large satellite images - show that our proposed coarse-to-fine approach is effective and highly efficient.
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粗到精深度核网络
在本文中,我们讨论了深度核网络的高效计算问题。我们提出了一个新的框架,大大降低了评估这些深度核的复杂性。我们的方法是基于一个为高效计算而设计的从粗到精的级联网络;级联的早期阶段很便宜,可以有效地排除许多模式,而深层阶段更昂贵,也更准确。这些降低复杂性网络的设计原则是基于交叉熵准则的一种变体,该准则降低了级联中网络的复杂性,同时保留了原始核心网络的所有正响应。在具有挑战性和时间要求的变化检测任务中,在非常大的卫星图像上进行的实验表明,我们提出的从粗到精的方法是有效和高效的。
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