Solving Complex Background Problem Using RetinaNet for Sign System for Indonesian Language (SIBI) Gesture-to-Text Translator

Median Hardiv Nugraha, Erdefi Rakun
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Abstract

SIBI is the standardized sign language system offi-cially used in Indonesia. The application of SIBI is often found to be a hindrance because there are too many gestures that must be memorized. A mobile-based application is needed as gesture-to-text translator. From Rakun et al., Skin Color Segmentation was used as a method to segment hand and facial features using greenscreen background as dataset (3.367% of WER and 80.180% of SAcc). When this application is used, the gesture video is recorded on complex background but performed poorly (135.180% of WER and 0% of SAcc score). The computational time using Skin Color Segmentation is 0.013 s per frame. OpenPose was used to locate hand and facial position. OpenPose can give better performance (6.312% of WER and 69.293% of SAcc score) compared to Skin Color Segmentation but cannot be implemented on mobile application. The computational time using OpenPose is 0.410 s per frame. The focus of this study is to find a model that can locate hand and facial position on complex background and also can be implemented on mobile application. The model we use is RetinaNet. RetinaNet is proven to locate hand and facial position much better (4,100% of WER and 78,990 % of SAcc score) than Skin Color Segmentation and OpenPose. The computational time using RetinaNet is 0.038 s per frame.
利用retanet解决印尼语(SIBI)手势转文字翻译系统的复杂背景问题
SIBI是印尼官方使用的标准化手语系统。SIBI的应用经常被发现是一个障碍,因为有太多的手势必须记住。需要一个基于移动的应用程序作为手势到文本的翻译。Rakun等人以绿屏背景为数据集,采用肤色分割方法对手和面部特征进行分割(WER为3.367%,SAcc为80.180%)。当使用该应用程序时,手势视频在复杂的背景下录制,但表现不佳(135.180%的WER和0%的SAcc分数)。使用肤色分割的计算时间为每帧0.013秒。使用OpenPose定位手和面部位置。与肤色分割相比,OpenPose可以提供更好的性能(WER的6.312%和SAcc的69.293%),但不能在移动应用上实现。使用OpenPose的计算时间为每帧0.410 s。本研究的重点是寻找一种能够在复杂背景下定位手和面部位置并能在移动应用上实现的模型。我们使用的模型是RetinaNet。与肤色分割和OpenPose相比,RetinaNet被证明能更好地定位手和面部位置(WER的4100%和SAcc的78,990%)。使用retanet的计算时间为每帧0.038秒。
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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