基于外观注视估计的多分辨率融合变压器高效神经结构搜索

Vikrant Nagpure, K. Okuma
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引用次数: 4

摘要

为了实现更精确的基于外观的凝视估计,最近的一系列工作提出了使用变压器或高分辨率网络的几种方法,这些方法达到了最先进的水平,但这些工作在边缘计算设备上的实时应用缺乏效率。在本文中,我们提出了一个紧凑的模型来精确有效地解决注视估计问题。该模型包括:1)基于神经结构搜索(NAS)的多分辨率特征提取器,用于提取具有全局和局部信息的特征图;2)一种新的多分辨率融合变压器作为凝视估计头,通过融合提取的特征图有效地估计凝视值。我们在ETH-XGaze数据集上搜索我们提出的模型GazeNAS-ETH。我们通过实验证实,GazeNAS-ETH在Gaze360、MPIIFaceGaze、RTGENE和EYEDIAP数据集上达到了最先进的水平,同时只有大约1M个参数,仅使用0.28 GFLOPs,与以前最先进的模型相比,这大大减少了,使其更容易部署到实时应用程序中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Searching Efficient Neural Architecture with Multi-resolution Fusion Transformer for Appearance-based Gaze Estimation
For aiming at a more accurate appearance-based gaze estimation, a series of recent works propose to use transformers or high-resolution networks in several ways which achieve state-of-the-art, but such works lack efficiency for real-time applications on edge computing devices. In this paper, we propose a compact model to precisely and efficiently solve gaze estimation. The proposed model includes 1) a Neural Architecture Search(NAS)-based multi-resolution feature extractor for extracting feature maps with global and local information which are essential for this task and 2) a novel multi-resolution fusion transformer as the gaze estimation head for efficiently estimating gaze values by fusing the extracted feature maps. We search our proposed model, called GazeNAS-ETH, on the ETH-XGaze dataset. We confirmed through experiments that GazeNAS-ETH achieved state-of-the-art on Gaze360, MPIIFaceGaze, RTGENE, and EYEDIAP datasets, while having only about 1M parameters and using only 0.28 GFLOPs, which is significantly less compared to previous state-of-the-art models, making it easier to deploy for real-time applications.
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