Automatic recognition of an online series of unsegmented actions requires a method for segmentation that determines when an action starts and when it ends. In this paper, a novel approach for recognizing unsegmented actions in online test experiments is proposed. The method uses self-organizing neural networks to build a three-layer cognitive architecture. The unique features of an action sequence are represented as a series of elicited key activations by the first-layer self-organizing map. An average length of a key activation vector is calculated for all action sequences in a training set and adjusted in learning trials to generate input patterns to the second-layer self-organizing map. The pattern vectors are clustered in the second layer, and the clusters are then labeled by an action identity in the third layer neural network. The experiment results show that although the performance drops slightly in online experiments compared to the offline tests, the ability of the proposed architecture to deal with the unsegmented action sequences as well as the online performance makes the system more plausible and practical in real-case scenarios.
翻译:自动识别在线一系列未分解动作需要一种分解方法,该方法决定一个动作开始的时间和结束的时间。 在本文中, 提出了一种在在线测试实验中识别未分解动作的新办法。 该方法使用自我组织神经网络来构建一个三层认知结构。 动作序列的独特性表现为由一层自我组织地图生成的一系列导出关键键激活。 关键激活矢量的平均长度被计算为一组训练中的所有动作序列, 并在学习实验中进行调整, 以生成二层自组织地图的输入模式。 模式矢量被组合在第二层, 然后在第三层神经网络中以动作标识为组。 实验结果显示, 虽然与离线测试相比, 在线实验的性能略有下降, 但拟议结构处理未分解动作序列的能力以及在线性能使得系统在真实情景中更加可信和实用。