古印度人对“书写”的贡献(特别强调南亚和印度的书写系统)

M. Lakshmithathachar
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引用次数: 0

摘要

只提供摘要形式。多年来,已经提出了许多模型来研究一般的人类运动,特别是手写:依赖神经网络的模型,动力学模型,心理物理模型,运动学模型和利用最小化原则的模型。在可用于提供笔划分析表示的模型中,人体快速运动的运动学理论及其delta-对数正态模型经常作为依赖于精细神经运动性的模式识别系统设计的指南,如在线手写识别,签名验证以及以某种方式涉及人体运动全局处理的智能系统设计。此外,本讲座旨在阐述许多手写应用的理论背景,并提供一些在开发自动模式识别系统时可以整合或照顾的基本知识。更具体地说,我们将概述单个笔画的基本神经运动特性,并解释如何将它们矢量叠加以生成复杂的笔尖轨迹。这样,我们将报告我们的团队和合作者所进行的各种项目。首先,我们将对该领域的不同模型进行简要的比较调查,并重点关注涉及对数正态函数的模型族。然后,从实际的角度出发,我们将描述两种新的参数提取算法,适用于单个笔画和复杂手写信号的逆向工程。我们将展示如何利用由此产生的表征来表征签名者和写作者,以及如何利用相应的特征集来研究各种因素(如年龄和健康问题)对笔迹可变性的影响。我们还将描述一些方法来自动生成庞大的在线手写数据库,用于依赖于写作者或独立于写作者的应用程序,以及合成签名数据库的生成。从理论的角度来看,我们将解释如何使用原始的心理物理学设置,我们已经能够验证运动学理论的基本假设,并测试其最独特的预测。我们将通过解释如何利用运动学理论来改善肌电图和脑电图信号处理来完成这一调查,为在线手写处理的新潜在应用打开一扇窗,特别是在生物医学工程和神经科学的一些领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contribution of Ancient Indians to 'Writing' (With Special Emphasis on South Asian and Indian Writing Systems)
Summary form only given. Many models have been proposed over the years to study human movements in general and handwriting in particular: models relying on neural networks, dynamics models, psychophysical models, kinematic models and models exploiting minimization principles. Among the models that can be used to provide analytical representations of a pen stroke, the Kinematic Theory of rapid human movements and its delta-lognormal model has often served as a guide in the design of pattern recognition systems relying on the exploitation of the fine neuromotricity, like on-line handwriting recognition, signature verification as well as in the design of intelligent systems involving in a way or another, the global processing of human movements. Among other things, this invited lecture aims at elaborating a theoretical background for many handwriting applications as well as providing some basic knowledge that could be integrated or taking care of in the development of automatic pattern recognition systems. More specifically, we will overview the basic neuromotor properties of single strokes and explain how they can be superimposed vectorially to generate complex pen tip trajectories. Doing so, we will report on various projects conducted by our team and our collaborators. First, we will present a brief comparative survey of the different models in the field and focus on the family of models involving lognormal functions. Then, from a practical perspective, we will describe two new parameter extraction algorithms suitable for the reverse engineering of individual strokes as well as of complex handwriting signals. We will show how the resulting representation could be employed to characterize signers and writers and how the corresponding feature sets could be exploited to study the effects of various factors, like aging and health problems, on handwriting variability. We will also describe some methodologies to generate automatically huge on-line handwriting databases for either writer dependent or writer independent applications as well as for the production of synthetic signature databases. From a theoretical perspective, we will explain how, using an original psychophysical set up, we have been able to validate the basic hypothesis of the Kinematic Theory and to test its most distinctive predictions. We will complete this survey by explaining how the Kinematic Theory could be utilized to improve electromyographic and electroencephalographic signal processing, opening a window on novel potential applications for on-line handwriting processing, particularly in biomedical engineering and in some fields of the neurosciences.
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