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Real-Time Recurrent Tactile Recognition: Momentum Batch-Sequential Echo State Networks

机译:实时复发性触觉识别:动量批量序贯回声状态网络

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Tactile recognition aims at identifying target objects according to tactile sensory readings. Tactile data have two salient properties: 1) sequentially real-time and 2) temporally correlated, which essentially calls for a real-time (i.e., online fixed-budget) and recurrent recognition procedure. Based on an efficient and robust spatio-temporal feature representation for tactile sequences, we handle the problem of real-time recurrent tactile recognition by proposing a bounded online-sequential learning framework, and incorporates the strength of batch-regularization bootstrapping, bounded recursive reservoir, and momentum-based estimation. Experimental evaluations show that it outperforms the state-of-the-art methods by a large margin on test accuracy; and its training performance is superior to most compared models from aspects of average online training error, computational complexity, and storage efficiency.
机译:触觉识别旨在根据触觉感官读数识别目标物体。触觉数据具有两个突出性特性:1)顺序实时和2)在时间上相关,基本上呼叫实时(即在线固定预算)和经常性识别程序。基于用于触觉序列的高效且强大的时空特征表示,我们通过提出有界的在线顺序学习框架来处理实时复发性触觉识别的问题,并包含批量正则化引导,有界递归储层的强度,和基于势头的估计。实验评估表明,在测试精度的大幅度下,它优于最先进的方法;其培训性能优于比平均在线训练误差,计算复杂性和存储效率的各个方面的比较模型。

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