Turtle-like Geometry Learning: How Humans and Machines Differ in Learning Turtle Geometry

Sina Rismanchian, Shayan Doroudi, Yasaman Razeghi
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Abstract

While object recognition is one of the prevalent affordances of humans' perceptual systems, even human infants can prioritize a place system over the object recognition system, that is used when navigating. This ability, combined with active learning strategies can make humans fast learners of Turtle Geometry, a notion introduced about four decades ago. We contrast humans' performances and learning strategies with large visual language models (LVLMs) and as we show, LVLMs fall short of humans in solving Turtle Geometry tasks. We outline different characteristics of human-like learning in the domain of Turtle Geometry that are fundamentally unparalleled in state-of-the-art deep neural networks and can inform future research directions in the field of artificial intelligence.
海龟式几何学习:人类和机器在学习海龟几何时有何不同
虽然物体识别是人类感知系统的主要能力之一,但即使是人类婴儿也能在导航时优先使用位置系统,而不是物体识别系统。这种能力与积极的学习策略相结合,可以使人类快速学习《海龟几何》(Turtle Geometry),这是大约四十年前提出的概念。我们将人类的表现和学习策略与大型视觉语言模型(LVLMs)进行了对比,结果表明,LVLMs 在解决《海龟几何》任务方面不及人类。我们概述了海龟几何领域中类似人类学习的不同特点,这些特点是最先进的深度神经网络所无法比拟的,可以为人工智能领域的未来研究方向提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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