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首页> 外文期刊>Precision Agriculture >Immature green citrus fruit detection and counting based on fast normalized cross correlation (FNCC) using natural outdoor colour images
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Immature green citrus fruit detection and counting based on fast normalized cross correlation (FNCC) using natural outdoor colour images

机译:基于快速归一化互相关(FNCC)的未成熟绿色柑橘类水果的检测和计数,使用的是室外自然彩色图像

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A fast normalized cross correlation (FNCC) based machine vision algorithm was proposed in this study to develop a method for detecting and counting immature green citrus fruit using outdoor colour images toward the development of an early yield mapping system. As a template matching method, FNCC was used to detect potential fruit areas in the image, which was the very basis for subsequent false positive removal. Multiple features, including colour, shape and texture features, were combined in this algorithm to remove false positives. Circular Hough transform (CHT) was used to detect circles from images after background removal based on colour components. After building disks centred in centroids resulted from both FNCC and CHT, the detection results were merged based on the size and Euclidian distance of the intersection areas of the disks from these two methods. Finally, the number of fruit was determined after false positive removal using texture features. For a validation dataset of 59 images, 84.4 % of the fruits were successfully detected, which indicated the potential of the proposed method toward the development of an early yield mapping system.
机译:这项研究中提出了一种基于快速归一化互相关(FNCC)的机器视觉算法,以开发一种使用室外彩色图像检测和计数未成熟绿色柑橘类水果的方法,以期开发早期产量映射系统。作为模板匹配方法,FNCC用于检测图像中潜在的水果区域,这是随后进行假阳性去除的基础。该算法结合了多种功能,包括颜色,形状和纹理特征,以消除误报。圆形霍夫变换(CHT)用于基于颜色分量从背景去除后的图像中检测圆圈。在构建由FNCC和CHT产生的以质心为中心的磁盘后,基于这两种方法的磁盘相交区域的大小和欧几里得距离,合并检测结果。最后,使用纹理特征确定假阳性后的水果数量。对于包含59张图像的验证数据集,成功检测到84.4%的水果,这表明该方法对于开发早期产量定位系统的潜力。

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