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A Bayesian Framework for the Assessment of Vision-based Weed and Fruit Detection and Classification Algorithms

机译:评估基于视觉的杂草和水果检测与分类算法的贝叶斯框架

摘要

This paper proposes new metrics and a performance-assessment framework for vision-based weed and fruit detection and classification algorithms. In order to compare algorithms, and make a decision on which one to use fora particular application, it is necessary to take into account that the performance obtained in a series of tests is subject to uncertainty. Such characterisation of uncertainty seems not to be captured by the performance metrics currently reported in the literature. Therefore, we pose the problem as a general problem of scientific inference, which arises out of incomplete information, and propose as a metric of performance the(posterior) predictive probabilities that the algorithms will provide a correct outcome for target and background detection. We detail the framework through which these predicted probabilities can be obtained, which is Bayesian in nature. As an illustration example, we apply the framework to the assessment of performance of four algorithms that could potentially be used in the detection of capsicums (peppers).
机译:本文针对基于视觉的杂草以及水果检测和分类算法提出了新的指标和性能评估框架。为了比较算法,并确定针对特定应用使用哪种算法,有必要考虑到在一系列测试中获得的性能会受到不确定性的影响。不确定性的这种表征似乎无法被文献中当前报告的性能指标所捕获。因此,我们将该问题视为科学推理的一个普遍问题,该问题是由不完全的信息引起的,并提出了一种(后)预测概率作为性能的度量标准,该算法将为目标和背景检测提供正确的结果。我们详细介绍了可以通过这些框架获得这些预测概率的框架,本质上是贝叶斯模型。作为说明示例,我们将该框架应用于可能用于检测辣椒(辣椒)的四种算法的性能评估。

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