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Margin Based Knowledge Distillation for Mobile Face Recognition

机译:基于边缘的移动人脸识别的知识蒸馏

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With the rapid progress of face recognition it has more and more applications in everyday life. Although its backbone,very deep neural networks, also show improvement both in terms of accuracy and efficiency their computational cost andmemory usage is still a limiting factor for deploying these models on a hardware with limited computational and powerresources, such as mobile or embedded devices. Here arises the task of learning fast and compact deep neural networkswhich have a comparable accuracy to the complex model as requirement of real-life applications. Another issue is thatsometimes face recognition system may run models of different complexity depending of the devices used for biometrictemplate extraction (i.e. desktop with GPU or mobile phone), so the compatibility between the face descriptors isdesirable. Our paper considers both this cases: we propose a new method for learning fast and compact face recognitionmodel which has a similar performance to a much more complex model used for transferring its knowledge and we alsoshow that both these models can be used for verification in a single face recognition system. To the best of ourknowledge such evaluation of a compatibility between 2 different models for face recognition was never done before ourwork.
机译:随着人脸识别的快速进步,它在日常生活中具有越来越多的应用。虽然它的骨干,非常深的神经网络,也在准确性和效率的计算成本方面表现出改进内存用法仍然是在具有有限的计算和电源的硬件上部署这些模型的限制因素资源,如移动或嵌入式设备。这里出现了学习快速和紧凑的深神经网络的任务这对复杂模型具有可比的准确性,作为现实生活应用的要求。另一个问题是有时,面部识别系统可能会根据用于生物识别的设备运行不同复杂性的模型模板提取(即桌面与GPU或移动电话),因此面部描述符之间的兼容性是可取的。我们的论文考虑了这两个案例:我们提出了一种新的学习快速和紧凑的人脸识别方法模型具有与用于转移知识的更复杂的模型具有类似的性能和我们的模型表明这两种模型都可以用于单个面部识别系统中的验证。据我们所知知识在我们的面对面识别2种不同模型之间的兼容性评估永远不会在我们之前完成工作。

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