【24h】

Recognizing actions with the associative self-organizing map

机译:用联想自组织图识别动作

获取原文
获取原文并翻译 | 示例

摘要

When artificial agents interact and cooperate with other agents, either human or artificial, they need to recognize others' actions and infer their hidden intentions from the sole observation of their surface level movements. Indeed, action and intention understanding in humans is believed to facilitate a number of social interactions and is supported by a complex neural substrate (i.e. the mirror neuron system). Implementation of such mechanisms in artificial agents would pave the route to the development of a vast range of advanced cognitive abilities, such as social interaction, adaptation, and learning by imitation, just to name a few. We present a first step towards a fully-fledged intention recognition system by enabling an artificial agent to internally represent action patterns, and to subsequently use such representations to recognize — and possibly to predict and anticipate — behaviors performed by others. We investigate a biologically-inspired approach by adopting the formalism of Associative Self-Organizing Maps (A-SOMs), an extension of the well-known Self-Organizing Maps. The A-SOM learns to associate its activities with different inputs over time, where inputs are high-dimensional and noisy observations of others' actions. The A-SOM maps actions to sequences of activations in a dimensionally reduced topological space, where each centre of activation provides a prototypical and iconic representation of the action fragment. We present preliminary experiments of action recognition task on a publicly available database of thirteen commonly encountered actions with promising results.
机译:当人工代理与其他人工代理或人工代理互动并合作时,他们需要识别其他人的行为,并从对它们表面水平面运动的唯一观察中推断出他们的隐藏意图。确实,人们对动作和意图的理解被认为促进了许多社交互动,并且得到了复杂的神经基质(即镜像神经元系统)的支持。在人工代理中实施这种机制将为发展各种高级认知能力铺平道路,例如社交互动,适应和模仿学习等。通过使人工代理能够在内部表示动作模式,并随后使用这种表示来识别(并可能预测和预期)他人执行的行为,我们向成熟的意图识别系统迈出了第一步。我们通过采用联想自组织图(A-SOMs)的形式主义来研究生物学启发的方法,自组织图是著名的自组织图的扩展。 A-SOM学会随着时间的推移将其活动与不同的输入相关联,其中输入是对他人行为的高维度和嘈杂的观察。 A-SOM将动作映射到尺寸减小的拓扑空间中的激活序列,其中每个激活中心都提供了该动作片段的原型和图标表示。我们在一个公开的数据库中提供了动作识别任务的初步实验,该数据库包含13种常见的动作,并取得了可喜的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号