一种在实时机器视觉应用中提高分割精度和检测率的递归分割和分类方案

Yuhua Ding, G. Vachtsevanos, A. Yezzi, Yinchuan Zhang, Y. Wardi
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引用次数: 11

摘要

分割精度是提高检测率的关键因素。通过准确的分割,结果更容易解释,分类性能更好。因此,需要有一个性能指标来进行分割评价。然而,许多限制限制了使用现有的分段性能度量。为了提高实时机器视觉中的分割精度和分类性能,提出了一种递归分割分类方案。在该方案中,将分类结果的置信度作为一种新的性能指标来评价分割算法的准确性。重复分割,直到达到所需置信水平的分类。该方案可自动实现。实验结果表明,该方法可以有效地提高分割精度和整体检测性能,特别是在场景复杂、单一分割算法无法产生满意结果的实时机器视觉应用中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A recursive segmentation and classification scheme for improving segmentation accuracy and detection rate in real-time machine vision applications
The segmentation accuracy is shown to be a critical factor in detection rate improvement. With accurate segmentation, results are easier to interpret, and classification performance is better. Therefore, it is required to have a performance measure for segmentation evaluation. However, a number of restrictions limit using existing segmentation performance measures. A recursive segmentation and classification scheme is proposed to improve segmentation accuracy and classification performance in real-time machine vision applications. In this scheme, the confidence level of classification results is used as a new performance measure to evaluate the accuracy of segmentation algorithm. Segmentation is repeated until a classification with desired confidence level is achieved. This scheme can be implemented automatically. Experimental results show that it is efficient to improve segmentation accuracy and the overall detection performance, especially for real-time machine vision applications, where the scene is complicated and a single segmentation algorithm cannot produce satisfactory results.
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