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Statistical vs. visual data generation in hand gesture recognition

机译:手势识别中统计数据与视觉数据的生成

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A dataset with diverse training data is essence of the hand gesture recognition research. Most of the benchmarked datasets are limited in the number of signers and/or the number of each gesture try, which often result in over-fitting and poor generalization. Overcoming this challenge is often achieved by collecting a large number of exemplars for each hand gesture. This process is either expensive or impractical. Recently, synthetic data generation methods have been presented as a more reliable way to extend and enrich datasets. This paper proposes a comparative study of statistical and visual synthetic data generation. The visual synthetic data generation is executed by building synthetic 3D animated models using human figure design software. The experiments illustrate how the recognition accuracy will be changed when both methods used in enlarging the training data. The results show that in both cases recognition accuracy is enhanced, and in most cases, the visual synthetic data enlargement provides better improvement in the quality and diversity of the training data.
机译:具有多样化训练数据的数据集是手势识别研究的关键。大多数基准测试数据集的签名者数量和/或每个手势尝试的数量都受到限制,这通常会导致过度拟合和较差的泛化性。克服这一挑战通常是通过为每个手势收集大量示例来实现的。该过程要么昂贵要么不切实际。最近,已经提出了合成数据生成方法,作为扩展和丰富数据集的更可靠方法。本文提出了统计和视觉综合数据生成的比较研究。通过使用人形设计软件构建合成3D动画模型来执行可视合成数据生成。实验表明,当两种方法都用于扩大训练数据时,识别精度将如何改变。结果表明,在两种情况下,识别精度均得到提高,并且在大多数情况下,可视化合成数据的扩大可更好地改善训练数据的质量和多样性。

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