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Investigating Deep Neural Forests for Facial Expression Recognition

机译:调查面部表情识别的深神经林

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Facial Expression Recognition (FER) usually involves learning intermediate representations from high-dimensional, potentially noisy images, that can be adapted to unknown face morphologies. Moreover, it needs to fulfil the real-time constraint to be useful, e.g. for consumer robotics or healthcare systems. To tackle this issue, Random Forests (RFs) are convenient predictors, as the hard decisions at each node allow non-linear subdivisions of the space with a very fast evaluation runtime. However RFs are non-differenciable predictors, making it impossible to back-propagate the error down to upstream feature extraction layers (e.g. CNN). In this paper, we investigate the adaptation of deep Neural Forests (NFs) to FER. The latter allows to combine the best of the two worlds, i.e. a differentiable classification model that can be trained with backpropagation and stochastic gradient descent but has the runtime of a RF. We show that NFs provides competitive results for FER as compared to state-of-the-art approaches when trained upon various combinations of geometric/CNN-based features.
机译:面部表情识别(FER)通常涉及从高维,潜在嘈杂的图像中学习中间表示,这可以适应未知的面部形态。此外,需要满足实时约束,以有用,例如,对于消费者机器人或医疗保健系统。为了解决这个问题,随机森林(RFS)是方便的预测因子,因为每个节点处的艰难决策允许具有非常快速的评估运行时的空间的非线性细分。然而,RFS是非差分预测器,使得不可能将误差返回到上游特征提取层(例如CNN)。在本文中,我们调查了深神经森林(NFS)对FER的适应。后者允许将两个世界的最佳组合,即可以用反向衰减和随机梯度下降训练的可分类分类模型,但具有RF的运行时间。我们表明,与在基于几何/ CNN的特征的各种组合训练时,NFS与最先进的方法相比,NFS为FER提供竞争力的结果。

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