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Compact Spatial Pyramid Pooling Deep Convolutional Neural Network Based Hand Gestures Decoder

机译:紧凑空间金字塔池深卷积神经网络的手势解码器

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Current deep learning convolutional neural network (DCNN) -based hand gesture detectors with acute precision demand incredibly high-performance computing power. Although DCNN-based detectors are capable of accurate classification, the sheer computing power needed for this form of classification makes it very difficult to run with lower computational power in remote environments. Moreover, classical DCNN architectures have a fixed number of input dimensions, which forces preprocessing, thus making it impractical for real-world applications. In this research, a practical DCNN with an optimized architecture is proposed with DCNN filter/node pruning, and spatial pyramid pooling (SPP) is introduced in order to make the model input dimension-invariant. This compact SPP-DCNN module uses 65 % fewer parameters than traditional classifiers and operates almost 3 × faster than classical models. Moreover, the new improved proposed algorithm, which decodes gestures or sign language finger-spelling from videos, gave a benchmark highest accuracy with the fastest processing speed. This proposed method paves the way for various practical and applied hand gesture input-based human-computer interaction (HCI) applications.
机译:电流深层学习卷积神经网络(DCNN)基于手势探测器,具有急性精密需求令人难以置信的高性能计算能力。尽管基于DCNN的探测器能够精确分类,但这种形式的分类所需的纯粹计算能力使得很难在远程环境中以较低的计算能力运行。此外,经典DCNN架构具有固定数量的输入尺寸,从而强制预处理,从而使实际应用程序不切实际。在本研究中,提出了一种具有优化架构的实用DCNN,使用DCNN滤波器/节点修剪提出,并引入了空间金字塔池(SPP),以使模型输入维度不变。该紧凑的SPP-DCNN模块使用比传统分类器更少的参数更少,而且比经典模型更快地运行近3倍。此外,新的改进的提出算法,解码来自视频的手势或手指拼写的手指拼写,具有最快的处理速度的基准最高精度。该提出的方法为基于各种实用和应用的手势输入的人机交互(HCI)应用铺平了道路。

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