论文标题
人类姿势的象征性代表可解释的学习和推理
A Symbolic Representation of Human Posture for Interpretable Learning and Reasoning
论文作者
论文摘要
在物理空间或应用中与人相互作用的机器人需要考虑该人的姿势,该姿势通常来自相机和红外等视觉传感器。人工智能和机器学习算法直接或在某种程度上符号抽象之后使用这些传感器的信息,而后者通常对观察值的范围进行分配以离散连续信号数据。尽管这些表示在各种算法中对准确性和任务完成有效,但基本模型很少可以解释,这也使他们的输出更难向要求它们的人解释。我们没有专注于机器熟悉的传感器值,而是引入了一种定性的空间推理方法,该方法用人们更熟悉的术语来描述人类的姿势。本文探讨了我们的符号表示的衍生,以两个细节的层面及其作为可解释活动识别的特征的初步用途。
Robots that interact with humans in a physical space or application need to think about the person's posture, which typically comes from visual sensors like cameras and infra-red. Artificial intelligence and machine learning algorithms use information from these sensors either directly or after some level of symbolic abstraction, and the latter usually partitions the range of observed values to discretize the continuous signal data. Although these representations have been effective in a variety of algorithms with respect to accuracy and task completion, the underlying models are rarely interpretable, which also makes their outputs more difficult to explain to people who request them. Instead of focusing on the possible sensor values that are familiar to a machine, we introduce a qualitative spatial reasoning approach that describes the human posture in terms that are more familiar to people. This paper explores the derivation of our symbolic representation at two levels of detail and its preliminary use as features for interpretable activity recognition.