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A vision-based hybrid approach for identification of Anthurium flower cultivars

机译:基于视觉的鉴定阳性花卉栽培杂种方法

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摘要

A hybrid approach was developed for highly accurate and effective identification of Anthurium flower cultivars in a computer vision-based sorting machine. Anthurium flowers have a small spike-shaped inflorescence called spadix. These flowers are distinguishable according to the color scheme of the spadix region. In the developed cultivar classification algorithm, the spadix region of test images was detected using the Viola-Jones object detection algorithm. The Viola-Jones detector was trained by positive images prepared from different cultivars of Anthurium flower, and the Oxford Flowers 17 dataset was used as negative images. Then, the detected region as Region of Interest (ROI) matched with images of various cultivars at different sizes and angles of rotation templates as a multi-template matching approach, in which each image was representative of a specified cultivar. The experiment results indicate that the proposed technique has acceptable performance in detecting the spadix region and inspiring performance in classifying the flower cultivars. At different conditions of the templates used for classification, the computation time as a critical criterion for real-time classification was less than 0.5 s, with the classification accuracy of more than 99%. In an automatic grading machine for flowers, cultivar classification of flowers is an important step for subsequent grading tasks.
机译:开发了一种混合方法,用于高准确,有效地识别计算机视觉的分拣机中的安丘花卉品种。安祖花花有一个称为spadix的小穗状花序。这些花是根据Spadix区域的颜色方案来区分的。在发达的品种分类算法中,使用Viola-Jones对象检测算法检测测试图像的Spadix区域。 Viola-Jones探测器培训是由由玉竹花的不同品种制备的正图像培训,并且牛津花17数据集用作负图像。然后,检测到的区域作为感兴趣的区域(ROI)与不同尺寸和旋转模板的不同品种的图像作为多模板匹配方法,其中每个图像代表指定的品种。实验结果表明,该技术在检测分类和鼓舞人心的性能方面具有可接受的性能在分类花卉品种方面。在用于分类的模板的不同条件下,作为实时分类的关键标准的计算时间小于0.5秒,分类精度超过99%。在用于鲜花的自动分级机中,鲜花的品种分类是后续分级任务的重要步骤。

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