利用相似度提高新输入的识别

Jerod J. Weinman, E. Learned-Miller
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引用次数: 26

摘要

许多与计算机视觉和机器学习任务相关的信息来源往往没有得到充分利用。一个例子是来自一个新来源的元素之间的相似性,例如演讲者、作家或印刷字体。通过比较源发出的实例,我们可以帮助确保为类似的实例提供相同的标签。以前的方法在识别之前对实例进行聚类。我们提出了一个概率框架,统一相似性与先前的身份和上下文信息。通过在单个模型中融合信息源,我们消除了由于在不同阶段处理信息而导致的不可恢复的错误,并提高了整体准确性。该框架还自然地集成了以前被忽略的差异性信息。我们用一个应用程序来演示从自然场景中的标志图像中识别印刷字符。
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Improving Recognition of Novel Input with Similarity
Many sources of information relevant to computer vision and machine learning tasks are often underused. One example is the similarity between the elements from a novel source, such as a speaker, writer, or printed font. By comparing instances emitted by a source, we help ensure that similar instances are given the same label. Previous approaches have clustered instances prior to recognition. We propose a probabilistic framework that unifies similarity with prior identity and contextual information. By fusing information sources in a single model, we eliminate unrecoverable errors that result from processing the information in separate stages and improve overall accuracy. The framework also naturally integrates dissimilarity information, which has previously been ignored. We demonstrate with an application in printed character recognition from images of signs in natural scenes.
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