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Detecting Ripe Canarium Ovatum (Pili) Using Adaboost Classifier and Color Analysis

机译:使用Adaboost分类器和颜色分析检测成熟的卵子大卵菌

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Bicol region in terms of agriculture is known for its indigenous crop, canarium ovatum, or most commonly known as `Pili.' Canarium Ovatum has been recognized for its economic importance due to its potential in the export market. However, there has been a growing demand for pili because of the lack of equipment in post-production and processing operations and the need of the market cannot be met by the growers and processors. Fruit Detection in harvesting one of the post-production processes, is the first major task of a robot. A vision system that can easily recognize fruit in a tree, which is levelled to be as intelligent as human beings is difficult to develop. This study helped increase the accuracy of the detection of ripe canarium ovatum. Images were captured using a high-end drone (Phantom 4 Professional with 20 megapixel resolution). This study established the data set by selecting images for training which is composed of 80% of the total image acquired and 20% for test set. The background information of the images like leaves, twigs, unripe pili, and other objects were also categorized. An Adaboost classifier and color analysis was used in the detection of ripe pili. An average of 90.77% accuracy of the ripe pili detection was recognized during the evaluation of the algorithm. The performance of the algorithm was evaluated according to true positive, false negative, and false positive with an average of 90.77%, 9.23%and 0.77% results, respectively. The detection algorithm achieved a high correct detection rate and the Haar-like features have potentials for extracting shape and texture information of the ripe pili in natural settings which contain various visual features due to complex structures of the leaves, twigs and other objects. Future research will include enhanced detection rates, reduced processing time, reduced manual processes, and various cultivated varieties of pili. It may also accommodate more varied unstructured environments.
机译:就农业而言,比科尔地区以其本土农作物,卵形大黑麦草(Canarium ovatum)或最普遍的“皮利”(Pili)而闻名。由于其在出口市场上的潜力,卵子油树因其经济重要性而得到公认。然而,由于后期生产和加工操作中缺少设备,对菌毛的需求不断增长,种植者和加工者无法满足市场的需求。水果检测是收获后生产过程之一,是机器人的首要任务。很难开发出一种视觉系统,它很难识别出树木中的果实,而该果实的水平与人类一样高。这项研究帮助提高了成熟的大黄鱼卵的检测准确性。使用高端无人机(Phantom 4 Professional分辨率为20兆像素)捕获图像。这项研究通过选择用于训练的图像建立了数据集,该图像由获取的总图像的80%和测试集的20%组成。还对图像的背景信息(如树叶,树枝,未成熟的菌毛和其他物体)进行了分类。 Adaboost分类器和颜色分析用于检测成熟菌毛。在算法评估期间,可以识别出平均平均90.77%的成熟菌毛检测准确率。根据真阳性,假阴性和假阳性对算法的性能进行了评估,平均结果分别为90.77%,9.23%和0.77%。该检测算法实现了较高的正确检测率,并且类似Haar的特征具有在自然环境中提取成熟菌毛的形状和纹理信息的潜力,该自然菌由于叶片,嫩枝和其他物体的复杂结构而包含各种视觉特征。未来的研究将包括提高检出率,减少处理时间,减少手工工艺以及各种栽培的菌毛。它还可以适应更多不同的非结构化环境。

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