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Face attribute prediction using off-the-shelf CNN features

机译:使用现成的CNN功能的面部属性预测

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Predicting attributes from face images in the wild is a challenging computer vision problem. To automatically describe face attributes from face containing images, traditionally one needs to cascade three technical blocks - face localization, facial descriptor construction, and attribute classification - in a pipeline. As a typical classification problem, face attribute prediction has been addressed using deep learning. Current state-of-the-art performance was achieved by using two cascaded Convolutional Neural Networks (CNNs), which were specifically trained to learn face localization and attribute description. In this paper, we experiment with an alternative way of employing the power of deep representations from CNNs. Combining with conventional face localization techniques, we use off-the-shelf architectures trained for face recognition to build facial descriptors. Recognizing that the describable face attributes are diverse, our face descriptors are constructed from different levels of the CNNs for different attributes to best facilitate face attribute prediction. Experiments on two large datasets, LFWA and CelebA, show that our approach is entirely comparable to the state-of-the-art. Our findings not only demonstrate an efficient face attribute prediction approach, but also raise an important question: how to leverage the power of off-the-shelf CNN representations for novel tasks.
机译:预测野外面部图像的属性是一个具有挑战性的计算机视觉问题。自动描述从包含图像的脸部的面部属性,传统上是一个需要级联三个技术块 - 面部定位,面部描述符结构和属性分类 - 在管道中。作为典型的分类问题,使用深度学习解决了面部属性预测。通过使用两个级联的卷积神经网络(CNNS)实现了最新的最先进的性能,这些性能是专门训练的,以学习面部本地化和属性描述。在本文中,我们尝试采用来自CNNS的深度表示的力量的替代方法。与传统的面部定位技术相结合,我们使用培训的现成架构,以便面部识别构建面部描述符。认识到所描述的面部属性是多样的,我们的脸描述符由不同级别的CNN的不同级别构成,以最佳促进面部属性预测。两个大型数据集,LFWA和Celeba的实验表明,我们的方法完全可与最先进的方式相媲美。我们的调查结果不仅展示了有效的面部属性预测方法,还提出了一个重要问题:如何利用商业内的CNN表示的力量进行新型任务。

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