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Automatic wheat ear counting in-field conditions: simulation and implication of lower resolution images

机译:自动麦穗计数现场条件:低分辨率图像的模拟和含义

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The number of ears per unit ground area, or ear density, is in most cases the main agronomic yield component of wheat. A fast evaluation of this attribute may contribute to crop monitoring and improve the efficiency of crop management practices as well as breeding programs. Currently, the number of ears is counted manually, which is time consuming. This work uses zenithal RGB images taken from above the crop canopy in natural light and field conditions. Wheat trials were carried out in two sites (Aranjuez and Valladolid. Spain) during the 2014/2015 crop season. A set of 24 varieties of durum wheat in two growing conditions with three dates of measurement were used to create the image database. The algorithm for ear counting uses three steps: (ⅰ) Laplacian frequency filter (ⅱ) median filter (ⅲ) Find Maxima. Although the image database was collected at the ground level, we have simulated images at lower resolutions in order to test potential application from cameras with lower resolution, such mobiles phones, action cameras (5-12 megapixels), or even aerial platforms (e.g. UAV from 25-50 meters). Images were resized to five different resolutions with no interpolation techniques applied. The results demonstrate high accuracy between the algorithm counts and the manual (image-based) ear counts, higher than 90% in success rate, with a decrease of <1% when images were reduced to a half of its original size, and success rates decreasing by 2.29%, 7.32%, 17.32% and 38.82% for images resized by four, eight, 16 and 32 values, respectively.
机译:在大多数情况下,单位地面面积的穗数或穗密度是小麦的主要农艺产量组成部分。快速评估此属性可能有助于作物监测并提高作物管理实践和育种计划的效率。当前,耳朵的数量是手动计算的,这很耗时。这项工作使用在自然光和田野条件下从作物冠层上方拍摄的天顶RGB图像。在2014/2015作物季节,在两个地点(西班牙阿兰胡埃斯和巴利亚多利德)进行了小麦试验。在两个生长条件下使用三个测量日期的一组24种硬质小麦被用于创建图像数据库。计耳算法使用三个步骤:(ⅰ)拉普拉斯频率滤波器(ⅱ)中值滤波器(ⅲ)查找千里马。尽管图像数据库是在地面上收集的,但我们已经以较低的分辨率模拟了图像,以便测试具有较低分辨率的相机(例如手机,运动相机(5-12兆像素),甚至是空中平台(例如,UAV)的潜在应用从25至50米)。在不应用插值技术的情况下,将图像调整为五种不同的分辨率。结果表明,算法计数与手动(基于图像的)耳朵计数之间的准确性很高,成功率高于90%,当图像缩小到原始大小的一半时,成功率降低了<1%,并且成功率对于尺寸分别调整为四个,八个,16个和32个值的图像,它们分别减少了2.29%,7.32%,17.32%和38.82%。

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