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Interactive, Mobile, Distributed Pattern Recognition

机译:交互式,移动式,分布式模式识别

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摘要

As the accuracy of conventional classifiers, based only on a static partitioning of feature space, appears to be approaching a limit, it may be useful to consider alternative approaches. Interactive classification is often more accurate then algorithmic classification, and requires less time than the unaided human. It is more suitable for the recognition of natural patterns in a narrow domain like trees, weeds or faces than for symbolic patterns like letters and phonemes. On the other hand, symbolic patterns lend themselves better to using context and style to recognize entire fields instead of individual patterns. Algorithmic learning and adaptation is facilitated by accurate statistics gleaned from large samples in the case of symbolic patterns, and by skilled human judgment in the case of natural patterns. Recent technological advances like pocket computers, camera phones and wireless networks will have greater influence on mobile, distributed, interactive recognition of natural patterns than on conventional high-volume applications like mail sorting , check reading or forms processing.
机译:由于常规分类器的准确性(仅基于特征空间的静态划分)似乎正在接近极限,因此考虑使用替代方法可能很有用。交互式分类通常比算法分类更准确,并且比无助的人需要的时间更少。比起诸如字母和音素之类的象征性图案,它更适合于在狭窄的领域(如树木,杂草或面孔)中识别自然图案。另一方面,符号模式更适合使用上下文和样式来识别整个字段,而不是单个模式。在符号模式的情况下,通过从大样本中收集的准确统计信息,在自然模式的情况下,通过熟练的人工判断,可以促进算法的学习和适应。与便携式邮件,支票阅读或表格处理等传统的大批量应用程序相比,便携式计算机,照相电话和无线网络等最新技术进步将对自然模式的移动,分布式,交互式识别产生更大的影响。

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