Evaluation of coffee plant attributes by field collection and remotely piloted aircraft system images

IF 0.8 4区 农林科学 Q3 AGRICULTURE, MULTIDISCIPLINARY
N. L. Bento, G. Ferraz, R. A. P. Barata, L. S. Santana, R. O. Faria, Daniel V. Soares
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引用次数: 0

Abstract

Aim of study: To verify and evaluate the area occupied by coffee plants before and after the manual harvesting of fruits and the difference between such areas; demonstrate the correlation between data on chemical attributes of leaves, yield, vegetation indices, and areas occupied by coffee plants; and estimate yield based on the variable with the best statistical indicator. Area of study: Bom Jardim Farm in Santo Antônio do Amparo city, Minas Gerais, Brazil. Material and methods: We studied 52 sampling points composed of four coffee (Coffea arabica L.) plants each. Field data on leaf chemical attributes, yield, and aerial images of flights with the Remote Piloted Aircraft System were obtained over the study area. The images were processed in the Pix4D software, and the analyses were performed in the ArcGIS and Orange Canvas software. Main results: We verified a reduction in the area occupied by coffee plants due to the action of the harvest; no significant correlations were detected between leaf chemical attributes, yield data, and area occupied by coffee plants; and only the NDVI was adequate for determining a linear equation to estimate yield. Research highlights: The yield correlation and predicting estimates by applying vegetation indices optimize the time spent on field measurements using the remotely piloted aircraft system. The fall of leaves due to the action of harvesting was evidenced and promotes impacts on the next crop's yield.
利用野外采集和遥控飞机系统图像评价咖啡树属性
研究目的:验证和评价人工采收前后咖啡种植面积的差异;展示咖啡树叶化学属性、产量、植被指数和种植面积之间的相关性;并根据具有最佳统计指标的变量估计产量。研究领域:巴西米纳斯吉拉斯州圣Antônio do Amparo市的Bom Jardim农场。材料和方法:我们研究了52个采样点,每个采样点由4株咖啡(Coffea arabica L.)组成。在研究区域获得了叶片化学属性、产量的现场数据和远程驾驶飞机系统飞行的航空图像。在Pix4D软件中对图像进行处理,在ArcGIS和Orange Canvas软件中进行分析。主要结果:我们证实,由于收获的作用,咖啡树占用的面积减少了;叶化学属性、产量数据与咖啡树占地面积之间无显著相关;只有NDVI才足以确定一个线性方程来估计产量。研究重点:通过应用植被指数进行产量相关性和预测估算,优化了使用遥控飞机系统进行现场测量所花费的时间。由于收获的行动,叶子的掉落得到了证实,并促进了对下一季作物产量的影响。
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来源期刊
Spanish Journal of Agricultural Research
Spanish Journal of Agricultural Research 农林科学-农业综合
CiteScore
2.00
自引率
0.00%
发文量
60
审稿时长
6 months
期刊介绍: The Spanish Journal of Agricultural Research (SJAR) is a quarterly international journal that accepts research articles, reviews and short communications of content related to agriculture. Research articles and short communications must report original work not previously published in any language and not under consideration for publication elsewhere. The main aim of SJAR is to publish papers that report research findings on the following topics: agricultural economics; agricultural engineering; agricultural environment and ecology; animal breeding, genetics and reproduction; animal health and welfare; animal production; plant breeding, genetics and genetic resources; plant physiology; plant production (field and horticultural crops); plant protection; soil science; and water management.
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