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Isolated sign language recognition using Convolutional Neural Network hand modelling and Hand Energy Image

机译:使用卷积神经网络手建模和手能量图像的孤立手语识别

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摘要

This paper presents an isolated sign language recognition system that comprises of two main phases: hand tracking and hand representation. In the hand tracking phase, an annotated hand dataset is used to extract the hand patches to pre-train Convolutional Neural Network (CNN) hand models. The hand tracking is performed by the particle filter that combines hand motion and CNN pre-trained hand models into a joint likelihood observation model. The predicted hand position corresponds to the location of the particle with the highest joint likelihood. Based on the predicted hand position, a square hand region centered around the predicted position is segmented and serves as the input to the hand representation phase. In the hand representation phase, a compact hand representation is computed by averaging the segmented hand regions. The obtained hand representation is referred to as Hand Energy Image (HEI). Quantitative and qualitative analysis show that the proposed hand tracking method is able to predict the hand positions that are closer to the ground truth. Similarly, the proposed HEI hand representation outperforms other methods in the isolated sign language recognition.
机译:本文提出了一种隔离的手语识别系统,该系统包括两个主要阶段:手部跟踪和手部表示。在手跟踪阶段,带注释的手数据集用于提取手补丁以预训练卷积神经网络(CNN)手模型。通过将手部运动和CNN预训练手部模型组合成联合似然性观察模型的粒子过滤器执行手部跟踪。预测的手位置对应于具有最高联合似然性的粒子的位置。基于预测的手的位置,以预测的位置为中心的方形手区域被分割,并用作手表示阶段的输入。在手表示阶段,通过平均分割的手区域来计算紧凑的手表示。所获得的手表示被称为手能量图像(HEI)。定量和定性分析表明,所提出的手部跟踪方法能够预测更接近于地面真实情况的手部位置。同样,在孤立的手语识别中,建议的HEI手表示优于其他方法。

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