crop loss
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Agronomy ◽  
2022 ◽  
Vol 12 (1) ◽  
pp. 117
Author(s):  
Gayathiri Verasoundarapandian ◽  
Zheng Syuen Lim ◽  
Syahirah Batrisyia Mohamed Radziff ◽  
Siti Hajar Taufik ◽  
Nurul Aini Puasa ◽  
...  

Pesticide treatment dramatically reduces crop loss and enhances agricultural productivity, promoting global food security and economic growth. However, owing to high accrual and persistent tendency, pesticides could create significant ecological consequences when used often. Lately, the perspective has transitioned to implementing biological material, environmentally sustainable, and economical strategies via bioremediation approaches to eradicate pesticides contaminations. Microalgae were regarded as a prominent option for the detoxification of such hazardous contaminants. Sustainable application and remediation strategies of pesticides pollutants in the agriculture system by microalgae from the past studies, and recent advancements were integrated into this review. Bibliometric strategies to enhance the research advancements in pesticide bioremediation by microalgae between 2010 and 2020 were implemented through critical comparative analysis of documents from Scopus and PubMed databases. As a result, this study identified a growing annual research trend from 1994 to 2020 (nScopus > nPubMed). Global production of pesticide remediation by microalgae demonstrated significant contributions from India (23.8%) and China (16.7%). The author’s keyword clustering was visualized using bibliometric software (VOSviewer), which revealed the strongest network formed by “microalgae”, “bioremediation”, “biodegradation”, “cyanobacteria”, “wastewater”, and “pesticide” as significant to the research topic. Hence, this bibliometric review will facilitate the future roadmap for many scholars and authors who were drawing attention to the burgeoning research on bioremediation of pesticides to counteract environmental impacts while maintaining food sustainability.


2021 ◽  
Vol 38 (6) ◽  
pp. 1755-1766
Author(s):  
Santosh Kumar Upadhyay ◽  
Avadhesh Kumar

India is an agricultural country. Paddy is the main crop here on which the livelihood of millions of people depends. Brown spot disease caused by fungus is the most predominant infection that appears as oval and round lesions on the paddy leaves. If not addressed on time, it might result in serious crop loss. Pesticide use for plant disease treatment should be limited because it raises costs and pollutes the environment. Usage of pesticide and crop loss both can be minimized if we recognize the disease in a timely manner. Our aim is to develop a simple, fast, and effective deep learning structure for early-stage brown spot disease detection by utilizing infection severity estimation using image processing techniques. The suggested approach consists of two phases. In the first phase, the brown spot infected leaf image dataset is partitioned into two sets named as early-stage brown spot and developed stage brown spot. This partition is done on the basis of calculated infection severity. Infection severity is computed as a ratio of infected pixel count to total leaf pixel count. Total leaf pixel counts are determined by segmenting the leaf region from the background image using Otsu's thresholding technique. Infected pixel counts are determined by segmenting infected regions from leaf regions using Triangle thresholding segmentation. In the second phase, a fully connected CNN architecture is built for automatic feature extraction and classification. The CNN-based classification model is trained and validated using early-stage brown spot, developed stage brown spot, and healthy leaves images of rice plants. Early-stage brown spot and developed stage brown spot images used in training and validation are the same images that are obtained in phase 1. The experimental analysis shows that the proposed fully connected CNN-based early-stage brown spot disease recognition model is an effective approach. The classification accuracy of the suggested model is found to be 99.20%. The result of the suggested method is compared with those existing CNN-based disease recognition and classification methods that have used leaf images to recognize the diseases. It is observed that the performance of our method is significantly better than compared methods.


Energies ◽  
2021 ◽  
Vol 15 (1) ◽  
pp. 217
Author(s):  
Parthasarathy Velusamy ◽  
Santhosh Rajendran ◽  
Rakesh Kumar Mahendran ◽  
Salman Naseer ◽  
Muhammad Shafiq ◽  
...  

Agriculture is the primary source of income in developing countries like India. Agriculture accounts for 17 percent of India’s total GDP, with almost 60 percent of the people directly or indirectly employed. While researchers and planters focus on a variety of elements to boost productivity, crop loss due to disease is one of the most serious issues they confront. Crop growth monitoring and early detection of pest infestations are still a problem. With the expansion of cultivation to wider fields, manual intervention to monitor and diagnose insect and pest infestations is becoming increasingly difficult. Failure to apply on time fertilizers and pesticides results in more crop loss and so lower output. Farmers are putting in greater effort to conserve crops, but they are failing most of the time because they are unable to adequately monitor the crops when they are infected by pests and insects. Pest infestation is also difficult to predict because it is not evenly distributed. In the recent past, modern equipment, tools, and approaches have been used to replace manual involvement. Unmanned aerial vehicles serve a critical role in crop disease surveillance and early detection in this setting. This research attempts to give a review of the most successful techniques to have precision-based crop monitoring and pest management in agriculture fields utilizing unmanned aerial vehicles (UAVs) or unmanned aircraft. The researchers’ reports on the various types of UAVs and their applications to early detection of agricultural diseases are rigorously assessed and compared. This paper also discusses the deployment of aerial, satellite, and other remote sensing technologies for disease detection, as well as their Quality of Service (QoS).


PLoS ONE ◽  
2021 ◽  
Vol 16 (12) ◽  
pp. e0251952
Author(s):  
Santosh Hiremath ◽  
Samantha Wittke ◽  
Taru Palosuo ◽  
Jere Kaivosoja ◽  
Fulu Tao ◽  
...  

Identifying crop loss at field parcel scale using satellite images is challenging: first, crop loss is caused by many factors during the growing season; second, reliable reference data about crop loss are lacking; third, there are many ways to define crop loss. This study investigates the feasibility of using satellite images to train machine learning (ML) models to classify agricultural field parcels into those with and without crop loss. The reference data for this study was provided by Finnish Food Authority (FFA) containing crop loss information of approximately 1.4 million field parcels in Finland covering about 3.5 million ha from 2000 to 2015. This reference data was combined with Normalised Difference Vegetation Index (NDVI) derived from Landsat 7 images, in which more than 80% of the possible data are missing. Despite the hard problem with extremely noisy data, among the four ML models we tested, random forest (with mean imputation and missing value indicators) achieved the average AUC (area under the ROC curve) of 0.688±0.059 over all 16 years with the range [0.602, 0.795] in identifying new crop-loss fields based on reference fields of the same year. To our knowledge, this is one of the first large scale benchmark study of using machine learning for crop loss classification at field parcel scale. The classification setting and trained models have numerous potential applications, for example, allowing government agencies or insurance companies to verify crop-loss claims by farmers and realise efficient agricultural monitoring.


Author(s):  
Y. Darshan ◽  
K. Ramakrishnan ◽  
J. Pushpa ◽  
K. Prabakaran

The Pradhan Mantri Fasal Bima Yojna (PMFBY) is a crop-based insurance policy designed to help farmers who have suffered crop loss or damage and stabilizes farm income. In the year 2020-21, a study was conducted in the Tumkur district of Karnataka as district had highest number of insurance units (895) as compared to other districts of the Karnataka state. The findings of the study revealed that delay in getting the claim was the prime constraint faced by the beneficiaries with a highest percentage of 81.67 per cent and as ranked first followed by less compensation offered (80.00 per cent) and getting claims is a complicated procedure (76.67 per cent). With respect to suggestions given by the beneficiaries were before the start of the next season, the claim should be distributed with a percentage of 87.50 and ranked first, followed by organizing awareness programs for farmers regarding PMFBY (78.33 per cent) and representatives from financial institutions and policy makers should monitor and supervise the assessment (72.50 per cent). The study bought out a number of various constraints faced by the farmers related to Crop Insurance Schemes. As a result, concerned officers should approach the State Government and request that they make earnest efforts to pay the claim before the start of the following season as well as conduct more training and awareness programs.


2021 ◽  
Vol 34 ◽  
pp. 100392
Author(s):  
Manoochehr Shirzaei ◽  
Mostafa Khoshmanesh ◽  
Chandrakanta Ojha ◽  
Susanna Werth ◽  
Hannah Kerner ◽  
...  
Keyword(s):  

mSystems ◽  
2021 ◽  
Author(s):  
Kaitlin M. Gold

Plant disease threatens the environmental and financial sustainability of crop production, causing $220 billion in annual losses. The dire threat disease poses to modern agriculture demands tools for better detection and monitoring to prevent crop loss and input waste.


Author(s):  
Yanhui Lu ◽  
Kris A. G. Wyckhuys ◽  
Long Yang ◽  
Bing Liu ◽  
Juan Zeng ◽  
...  
Keyword(s):  

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