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Detection and counting of immature green citrus fruit based on the Local Binary Patterns (LBP) feature using illumination-normalized images

机译:基于局部二进制图案(LBP)特征的检测和计数使用照明标准化图像的特征

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摘要

Early detection and counting of immature green citrus fruit using computer vision can help growers produce a predictive yield map which could be used to adjust management practices during the fruit maturing stages. However, such detecting and counting is difficult because of varying illumination, random occlusion and color similarity with leaves. An immature fruit detection algorithm was developed with the aim of identifying and counting fruit in a citrus grove under varying illumination environments and random occlusions using images acquired by a regular red-green-blue (RGB) color camera. Acquired citrus images included front-lighting and back-lighting illumination conditions. The Retinex image enhancement algorithm and the two-dimensional discrete wavelet transform were used for image illumination normalization. Color-based K-means clustering and circular hough transform (CHT) were applied in order to detect potential fruit regions. A Local Binary Patterns feature-based Adaptive Boosting (AdaBoost) classifier was built for removing false positives. A sub-window was used to scan the difference image between the illumination-normalized image and the resulting image from CHT detection in order to detect small areas and partially occluded fruit. An overall accuracy of 85.6% was achieved for the validation set which showed promising potential for the proposed method.
机译:使用计算机视觉的早期检测和计数未成熟的绿色柑橘类水果可以帮助种植者产生一种预测产量图,可用于调整果实成熟阶段的管理实践。然而,由于不同的照明,随机闭塞和与叶子的颜色相似度变化,这种检测和计数是困难的。开发了一种不成熟的果实检测算法,目的是在不同的照明环境下鉴定和计数柑橘树丛中的果实和使用由常规的红绿蓝(RGB)彩色相机获取的图像的随机闭塞。获得的柑橘图像包括前照明和背光照明条件。 retinex图像增强算法和二维离散小波变换用于图像照明归一化。应用基于颜色的K均值聚类和圆形霍夫变换(CHT)以检测潜在的果实区域。构建了基于本地二进制模式的基于特征的自适应升压(Adaboost)分类器,用于删除误报。子窗口用于扫描照明归一化图像和来自CHT检测的所得图像之间的差异图像,以便检测小区域和部分闭塞的果实。对于验证集来实现了85.6%的总体准确性,该验证集显示了所提出的方法的有希望的潜力。

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