Recognizing actions with the associative self-organizing map

Miriam Buonamente, H. Dindo, Magnus Johnsson
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引用次数: 9

Abstract

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.
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用关联自组织图识别动作
当人工智能体与其他智能体(无论是人类还是人工智能体)交互和合作时,它们需要通过对其表面运动的唯一观察来识别他人的行为并推断其隐藏的意图。事实上,人类的行为和意图理解被认为促进了许多社会互动,并得到了复杂的神经基质(即镜像神经元系统)的支持。在人工智能体中实现这样的机制将为一系列高级认知能力的发展铺平道路,比如社会互动、适应和模仿学习,这只是其中的一些。我们向一个完全成熟的意图识别系统迈出了第一步,使人工智能体能够在内部表示行为模式,并随后使用这种表示来识别——并可能预测和预测——他人的行为。我们研究了一种受生物学启发的方法,采用了联合自组织地图(a - soms)的形式主义,这是众所周知的自组织地图的扩展。随着时间的推移,A-SOM学会将其活动与不同的输入联系起来,其中输入是对他人行为的高维和嘈杂的观察。a - som将动作映射到降维拓扑空间中的激活序列,其中每个激活中心提供动作片段的原型和标志性表示。我们在一个公开的13个常见动作数据库上进行了初步的动作识别实验,并取得了良好的结果。
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