Abstract

Conceptual knowledge about objects is essential for humans, as well as for animals, to interact with their environment. On this basis, the objects can be understood as tools, a selection process can be implemented and their usage can be planned in order to achieve a specific goal. The conceptual knowledge, in this case, is primarily concerned about the physical properties and functional properties observed in the objects. Similarly tool-use applications in robotics require such conceptual knowledge about objects for substitute selection among other purposes. State-of-the-art methods employ a top-down approach where hand-crafted symbolic knowledge, which is defined from a human perspective, is grounded into sensory data afterwards. However, due to different sensing and acting capabilities of robots, a robot's conceptual understanding of objects (e.g., light/heavy) will vary and therefore should be generated from the robot's perspective entirely, which entails robot-centric conceptual knowledge about objects. A similar bottom-up argument has been put forth in cognitive science that humans and animals alike develop conceptual understanding of objects based on their own perceptual experiences with objects. With this goal in mind, we propose an extensible property estimation framework which consists of estimations methods to obtain the quantitative measurements of physical properties (rigidity, weight, etc.) and functional properties (containment, support, etc.) from household objects. This property estimation forms the basis for our second contribution: Generation of robot-centric conceptual knowledge. Our approach employs unsupervised clustering methods to transform numerical property data into symbols, and Bivariate Joint Frequency Distributions and Sample Proportion to generate conceptual knowledge about objects using the robot-centric symbols. A preliminary implementation of the proposed framework is employed to acquire a dataset comprising six physical and four functional properties of 110 household objects. This Robot-Centric dataSet (RoCS) is used to evaluate the framework regarding the property estimation methods and the semantics of the considered properties within the dataset. Furthermore, the dataset includes the derived robot-centric conceptual knowledge using the proposed framework. The application of the conceptual knowledge about objects is then evaluated by examining its usefulness in a tool substitution scenario.

Highlights

  • Humans have become extremely sophisticated in their use of tools compare to their animal counterparts

  • Like humans, such conceptual knowledge about objects is desired in robot systems in order to efficiently perform tasks such as tool selection and substitute selection, where selection is driven by the knowledge about various properties observed in the objects (Stoytchev, 2007; Brown and Sammut, 2013)

  • Our review resulted in the following conclusions with respect to each building block discussed in the previous section: Conceptual Knowledge: As our desired conceptual knowledge about an object consists of qualitative knowledge about its physical and functional properties, we reviewed the existing knowledge bases to examine whether such conceptual knowledge was considered

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Summary

INTRODUCTION

Humans have become extremely sophisticated in their use of tools compare to their animal counterparts. Regardless of the use of existing knowledge bases or hand-coded relational knowledge, the required knowledge is generally carefully selected for a given task It is postulated in the literature on tool-use in animals (Baber, 2003, Chapter 1) that “a non-invasive tool selection in humans or animals alike is facilitated by conceptual knowledge about objects, especially, knowledge about their physical and functional properties and relationship between them.”. Based on our observations and interactions with various instances of a cup, a conceptual knowledge of a cup may for example consist of an object that has a handle, is hollow and can contain liquid Like humans, such conceptual knowledge about objects is desired in robot systems (from household to industrial robotics) in order to efficiently perform tasks such as tool selection and substitute selection, where selection is driven by the knowledge about various (physical and functional) properties observed in the objects (Stoytchev, 2007; Brown and Sammut, 2013). We present an approach to acquire relevant sensory data, estimate metrics of object (physical and functional) properties based on the data, and generate conceptual knowledge about objects in a bottom-up data-driven manner

Building Blocks for Robot-Centric Conceptual Knowledge
Related Work
Contribution
Generation of Robot-Centric Conceptual Knowledge
PROPERTY ESTIMATION FRAMEWORK
Property Estimation
Physical Properties
Size Property Definition
Flatness Property Definition
Hollowness Property
Heaviness Property Definition
Rigidity Property
Roughness Property
Functional Properties
Support Property Definition
Containment Property Definition
Movability Property Definition
Blockage Property Definition
GENERATION OF ROBOT-CENTRIC CONCEPTUAL KNOWLEDGE
Sub-categorization – From Continuous to Discrete
Attribution – Object Instance Knowledge
Conceptualization – Knowledge About Objects
EXPERIMENTAL EVALUATION
RoCS Dataset
Property Correlation
Property Semantics
Conceptual Knowledge for Substitute Selection
CONCLUSION
Findings
DATA AVAILABILITY STATEMENT
Full Text
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