Evaluation of Deep Learning based Pose Estimation for Sign Language Recognition

Srujana Gattupalli, Amir Ghaderi, V. Athitsos
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引用次数: 46

Abstract

Human body pose estimation and hand detection are two important tasks for systems that perform computer vision-based sign language recognition(SLR). However, both tasks are challenging, especially when the input is color videos, with no depth information. Many algorithms have been proposed in the literature for these tasks, and some of the most successful recent algorithms are based on deep learning. In this paper, we introduce a dataset for human pose estimation for SLR domain. We evaluate the performance of two deep learning based pose estimation methods, by performing user-independent experiments on our dataset. We also perform transfer learning, and we obtain results that demonstrate that transfer learning can improve pose estimation accuracy. The dataset and results from these methods can create a useful baseline for future works.
基于深度学习姿态估计的手语识别评价
人体姿态估计和手部检测是基于计算机视觉的手语识别系统的两个重要任务。然而,这两项任务都具有挑战性,特别是当输入是彩色视频时,没有深度信息。针对这些任务,文献中已经提出了许多算法,最近一些最成功的算法是基于深度学习的。本文介绍了一种用于单反域人体姿态估计的数据集。通过在我们的数据集上执行与用户无关的实验,我们评估了两种基于深度学习的姿态估计方法的性能。我们还进行了迁移学习,我们得到的结果表明迁移学习可以提高姿态估计的精度。这些方法的数据集和结果可以为未来的工作创建一个有用的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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