Training with positive and negative data samples: effects on a classifier for hand-drawn geometric shapes

Hanaa Barakat, D. Blostein
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引用次数: 1

Abstract

It is quite common in document analysis and symbol recognition to rely on a priori knowledge about the nature of the document in order to locate candidate symbols. It is desirable, but less common, for a segmentation procedure to rely on "a posteriori" feedback from a non-human-guided process to adjust for segmentation errors. For this method to succeed, the feedback must come from a reliable classifier (one that is able to reject negative symbols including miss-segmented symbols). This paper examines the use of positive and negative training data on a nearest-neighbour classifier for hand-drawn geometric shapes. We explore the issues involved in the development of a reliable classifier using this method, and we discuss the trade-off between reliability and correctness.
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正负数据样本训练:对手绘几何形状分类器的影响
在文档分析和符号识别中,依靠对文档性质的先验知识来定位候选符号是很常见的。这是可取的,但不太常见,分割过程依赖于“后验”反馈从一个非人工引导的过程来调整分割错误。为了使该方法成功,反馈必须来自可靠的分类器(能够拒绝包括未分割符号在内的负符号)。本文研究了在手绘几何形状的最近邻分类器上使用正训练数据和负训练数据。我们探讨了使用这种方法开发可靠分类器所涉及的问题,并讨论了可靠性和正确性之间的权衡。
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