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Energy Efficient Pupil Tracking Based on Rule Distillation of Cascade Regression Forest

机译:基于级联回归森林规则蒸馏的节能瞳孔跟踪

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摘要

As the demand for human-friendly computing increases, research on pupil tracking to facilitate human–machine interactions (HCIs) is being actively conducted. Several successful pupil tracking approaches have been developed using images and a deep neural network (DNN). However, common DNN-based methods not only require tremendous computing power and energy consumption for learning and prediction; they also have a demerit in that an interpretation is impossible because a black-box model with an unknown prediction process is applied. In this study, we propose a lightweight pupil tracking algorithm for on-device machine learning (ML) using a fast and accurate cascade deep regression forest (RF) instead of a DNN. Pupil estimation is applied in a coarse-to-fine manner in a layer-by-layer RF structure, and each RF is simplified using the proposed rule distillation algorithm for removing unimportant rules constituting the RF. The goal of the proposed algorithm is to produce a more transparent and adoptable model for application to on-device ML systems, while maintaining a precise pupil tracking performance. Our proposed method experimentally achieves an outstanding speed, a reduction in the number of parameters, and a better pupil tracking performance compared to several other state-of-the-art methods using only a CPU.
机译:随着对人类友好的计算的需求增加,正在积极开展对培养人机相互作用(HCIS)的瞳孔跟踪的研究。使用图像和深神经网络(DNN)开发了几种成功的瞳孔跟踪方法。然而,基于常见的DNN的方法不仅需要巨大的计算能力和用于学习和预测的能耗;它们还有一个缺点,因为不可能解释是不可能的,因为应用了具有未知预测过程的黑匣子模型。在本研究中,我们提出了一种轻量级的瞳孔跟踪算法,用于使用快速和精确的级联深度回归森林(RF)而不是DNN的设备学习(ML)。瞳孔估计以逐层RF结构以粗到细的方式应用,并且使用所提出的规则蒸馏算法简化了每个RF,用于去除构成RF的不重要规则。该算法的目标是产生更透明和可采用的模型,用于应用于设备ML系统,同时保持精确的瞳孔跟踪性能。我们所提出的方法通过仅使用仅使用CPU的几种其他最先进的方法,通过实验地实现了优异的速度,参数的数量减少,以及更好的瞳孔跟踪性能。

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