Using Remote Sensing and an Unmanned Aerial System for Weed Management in Agricultural Crops: A Review

Weeds are unwanted plants that can reduce crop yields by competing for water, nutrients, light, space, and carbon dioxide, which need to be controlled to meet future food production requirements. The integration of drones, artificial intelligence, and various sensors, which include hyperspectral, multi-spectral, and RGB (red-green-blue), ensure the possibility of a better outcome in managing weed problems. Most of the major or minor challenges caused by weed infestation can be faced by implementing remote sensing systems in various agricultural tasks. It is a multi-disciplinary science that includes spectroscopy, optics, computer, photography, satellite launching, electronics, communication, and several other fields. Future challenges, including food security, sustainability, supply and demand, climate change, and herbicide resistance, can also be overcome by those technologies based on machine learning approaches. This review provides an overview of the potential and practical use of unmanned aerial vehicle and remote sensing techniques in weed management practices and discusses how they overcome future challenges.

[1]  Morten Stigaard Laursen,et al.  Open Plant Phenotype Database of Common Weeds in Denmark , 2020, Remote. Sens..

[2]  Raman Spectroscopy Can Distinguish Glyphosate-Susceptible and -Resistant Palmer Amaranth (Amaranthus palmeri) , 2021, Frontiers in Plant Science.

[3]  Yanbo Huang,et al.  Differentiating glyphosate-resistant and glyphosate-sensitive Italian ryegrass using hyperspectral imagery , 2014, Sensing Technologies + Applications.

[4]  Zhiyong Wang,et al.  Graph weeds net: A graph-based deep learning method for weed recognition , 2020, Comput. Electron. Agric..

[5]  T. Hyvönen,et al.  Potential of pyrolysis liquids to control the environmental weed Heracleum mantegazzianum , 2020 .

[6]  W. S. Lee,et al.  Green citrus detection using hyperspectral imaging , 2009 .

[7]  A. Shirzadifar,et al.  Field identification of weed species and glyphosate-resistant weeds using high resolution imagery in early growing season , 2020 .

[8]  Kenneth L. Smith,et al.  Red Rice (Oryza sativa) Emergence Characteristics and Influence on Rice Yield At Different Planting Dates , 2009, Weed Science.

[9]  S. Aggarwal,et al.  PRINCIPLES OF REMOTE SENSING , 2005 .

[10]  L. Tian,et al.  A Review on Remote Sensing of Weeds in Agriculture , 2004, Precision Agriculture.

[11]  Eissa Alreshidi,et al.  Smart Sustainable Agriculture (SSA) Solution Underpinned by Internet of Things (IoT) and Artificial Intelligence (AI) , 2019, International Journal of Advanced Computer Science and Applications.

[12]  M. Uddin,et al.  Bioherbicidal Properties of Parthenium hysterophorus, Cleome rutidosperma and Borreria alata Extracts on Selected Crop and Weed Species , 2021, Agronomy.

[13]  M. S. Moran,et al.  Opportunities and limitations for image-based remote sensing in precision crop management , 1997 .

[14]  J. E. Rasmussen,et al.  Potential uses of small unmanned aircraft systems (UAS) in weed research , 2013 .

[15]  M. Latif,et al.  The addition of submergence-tolerant Sub1 gene into high yielding MR219 rice variety and analysis of its BC2F3 population in terms of yield and yield contributing characters to select advance lines as a variety , 2016 .

[16]  Thomas Blaschke,et al.  Object based image analysis for remote sensing , 2010 .

[17]  F. López-Granados,et al.  Early season weed mapping in sunflower using UAV technology: variability of herbicide treatment maps against weed thresholds , 2016, Precision Agriculture.

[18]  D. Bohan,et al.  Soil seedbank: Old methods for new challenges in agroecology? , 2020 .

[19]  Hisashi Igawa,et al.  Spatial pattern of windbreak effects on maize growth evaluated by an unmanned aerial vehicle in Hokkaido, northern Japan , 2018, Agroforestry Systems.

[20]  Kaspars Sudars,et al.  Dataset of annotated food crops and weed images for robotic computer vision control , 2020, Data in brief.

[21]  M. Shamsudin,et al.  Impact of climate change on food security in Malaysia: economic and policy adjustments for rice industry , 2016 .

[22]  T. Wright,et al.  Weed resistance to synthetic auxin herbicides , 2018, Pest management science.

[23]  B. Burns,et al.  Future-proofing weed management for the effects of climate change: is New Zealand underestimating the risk of increased plant invasions? , 2016 .

[24]  Mary C. Henry,et al.  Detecting an Invasive Shrub in Deciduous Forest Understories Using Remote Sensing , 2009, Weed Science.

[25]  K. Uddin,et al.  Effects of Tinospora tuberculata leaf methanol extract on seedling growth of rice and associated weed species in hydroponic culture , 2016 .

[26]  Yubin Lan,et al.  Comparison of Spray Deposition, Control Efficacy on Wheat Aphids and Working Efficiency in the Wheat Field of the Unmanned Aerial Vehicle with Boom Sprayer and Two Conventional Knapsack Sprayers , 2019, Applied Sciences.

[27]  Feng Zhang,et al.  Quantification of rice canopy nitrogen balance index with digital imagery from unmanned aerial vehicle , 2015 .

[28]  G. Bishwajit,et al.  Self-sufficiency in rice and food security: a South Asian perspective , 2013, Agriculture & Food Security.

[29]  K. Dehnen‐Schmutz,et al.  An ecological future for weed science to sustain crop production and the environment. A review , 2020, Agronomy for Sustainable Development.

[30]  David R. Shaw,et al.  Translation of remote sensing data into weed management decisions , 2005, Weed Science.

[31]  S. Ahirwar,et al.  Application of Drone in Agriculture , 2019, International Journal of Current Microbiology and Applied Sciences.

[32]  Hiroshi Okamoto,et al.  Plant classification for weed detection using hyperspectral imaging with wavelet analysis , 2007 .

[33]  M. Hasan,et al.  Bioherbicides: An Eco-Friendly Tool for Sustainable Weed Management , 2021, Plants.

[34]  R. Gerhards,et al.  Sensor-based Evaluation of Maize (Zea mays) and Weed Response to Postemergence Herbicide Applications of Isoxaflutole and Cyprosulfamide Applied as Crop Seed Treatment or Herbicide Mixing Partner. , 2019, Pest management science.

[35]  Lei Tian,et al.  Development of a low-cost agricultural remote sensing system based on an autonomous unmanned aerial vehicle (UAV) , 2011 .

[36]  D. Kwaśniewski,et al.  Towards Sustainable Agriculture—Agronomic and Economic Effects of Biostimulant Use in Common Bean Cultivation , 2019, Sustainability.

[37]  Deepak Murugan,et al.  Development of an Adaptive Approach for Precision Agriculture Monitoring with Drone and Satellite Data , 2017, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[38]  Ray Nishimoto Global trends in the crop protection industry. , 2019, Journal of pesticide science.

[39]  Azmi Yahya,et al.  Energy audit for sustainable wetland paddy cultivation in Malaysia , 2015 .

[40]  Joseph A. Shaw,et al.  Discrimination of herbicide-resistant kochia with hyperspectral imaging , 2018 .

[41]  Reyer Zwiggelaar,et al.  A review of spectral properties of plants and their potential use for crop/weed discrimination in row-crops , 1998 .

[42]  Francisca López Granados Weed detection for site-specific weed management: Mapping and real-time approaches , 2011 .

[43]  Jorge Torres-Sánchez,et al.  An Automatic Random Forest-OBIA Algorithm for Early Weed Mapping between and within Crop Rows Using UAV Imagery , 2018, Remote. Sens..

[44]  F. Sarghini,et al.  Drone and sensor technology for sustainable weed management: a review , 2021, Chemical and Biological Technologies in Agriculture.

[45]  Jorge Torres-Sánchez,et al.  An automatic object-based method for optimal thresholding in UAV images: Application for vegetation detection in herbaceous crops , 2015, Comput. Electron. Agric..

[46]  M. Uddin,et al.  Physiological and Biochemical Responses of Ageratum conyzoides, Oryza sativa f. spontanea (Weedy Rice) and Cyperus iria to Parthenium hysterophorus Methanol Extract , 2021, Plants.

[47]  Ni-Bin Chang,et al.  Comparative Sensor Fusion Between Hyperspectral and Multispectral Satellite Sensors for Monitoring Microcystin Distribution in Lake Erie , 2014, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[48]  B. Sawicka,et al.  Effect of Mechanical and Herbicide Treatments on Weed Densities and Biomass in Two Potato Cultivars , 2020, Agriculture.

[49]  Yong He,et al.  Automated spectral feature extraction from hyperspectral images to differentiate weedy rice and barnyard grass from a rice crop , 2019, Comput. Electron. Agric..

[50]  F. M. Zuki,et al.  Introduction of imidazolinone herbicide and Clearfield® rice between weedy rice—control efficiency and environmental concerns , 2018, Environmental Reviews.

[51]  Pablo J. Zarco-Tejada,et al.  Thermal and Narrowband Multispectral Remote Sensing for Vegetation Monitoring From an Unmanned Aerial Vehicle , 2009, IEEE Transactions on Geoscience and Remote Sensing.

[52]  Siamak Khorram,et al.  Image Processing and Data Analysis with ERDAS IMAGINE , 2018 .

[53]  D. Ervin,et al.  Understanding Weed Resistance as a Wicked Problem to Improve Weed Management Decisions , 2016, Weed Science.

[54]  K. Uddin,et al.  Introgression of root trait genes for drought tolerance to a Malaysian rice variety by marker-assisted backcross breeding , 2018 .

[55]  Fulya Baysal-Gurel,et al.  Unmanned Aircraft System (UAS) Technology and Applications in Agriculture , 2019, Agronomy.

[56]  Gunter Menz,et al.  Multi-temporal wheat disease detection by multi-spectral remote sensing , 2007, Precision Agriculture.

[57]  J. R. Rosell-Polo,et al.  Advances in Structured Light Sensors Applications in Precision Agriculture and Livestock Farming , 2015 .

[58]  A. Smith,et al.  Weed–Crop Discrimination Using Remote Sensing: A Detached Leaf Experiment1 , 2003, Weed Technology.

[59]  Xiaobing Kang,et al.  Review of Weed Detection Methods Based on Computer Vision , 2021, Sensors.

[60]  A. Ghulam,et al.  Unmanned Aerial System (UAS)-Based Phenotyping of Soybean using Multi-sensor Data Fusion and Extreme Learning Machine , 2017 .

[61]  V. Seufert,et al.  What is this thing called organic? – How organic farming is codified in regulations , 2017 .

[62]  F. López-Granados,et al.  Configuration and Specifications of an Unmanned Aerial Vehicle (UAV) for Early Site Specific Weed Management , 2013, PloS one.

[63]  A. Kniss Genetically Engineered Herbicide-Resistant Crops and Herbicide-Resistant Weed Evolution in the United States , 2017, Weed Science.

[64]  Frank Veroustraete,et al.  The Rise of the Drones in Agriculture , 2015 .

[65]  A. Islam,et al.  Assessment of allelopathic compounds to develop new natural herbicides : A review , 2021 .

[66]  Feng Zhao,et al.  Glyphosate-resistant and glyphosate-susceptible Palmer amaranth (Amaranthus palmeri S. Wats.): hyperspectral reflectance properties of plants and potential for classification. , 2014, Pest management science.

[67]  V. E. Viana,et al.  Molecular and Physiological Responses of Rice and Weedy Rice to Heat and Drought Stress , 2020, Agriculture.

[68]  Muhammad Shahid,et al.  An Appraisal of Dynamic Bayesian Model Averaging-based Merged Multi-Satellite Precipitation Datasets Over Complex Topography and the Diverse Climate of Pakistan , 2019, Remote. Sens..

[69]  D. P. Groeneveld,et al.  Near‐infrared discrimination of leafless saltcedar in wintertime Landsat TM , 2008 .

[70]  Nurul Nazihah Hawari,et al.  Analyzing the impact of price subsidy on rice self-sufficiency level in Malaysia: A preliminary finding , 2017 .

[71]  B. Chauhan Grand Challenges in Weed Management , 2020, Frontiers in Agronomy.

[72]  David C. Slaughter,et al.  Weed Management in 2050: Perspectives on the Future of Weed Science , 2018, Weed Science.

[73]  F. Lewu,et al.  Management impact and benefit of cover crops on soil quality: A review , 2020 .

[74]  G. Roesch-McNally,et al.  Research topics to scale up cover crop use: Reflections from innovative Iowa farmers , 2017, Journal of Soil and Water Conservation.

[75]  Kyle A. Emery,et al.  Meeting future food demand with current agricultural resources , 2016 .

[76]  Jörg Peter Baresel,et al.  Use of a digital camera as alternative method for non-destructive detection of the leaf chlorophyll content and the nitrogen nutrition status in wheat , 2017, Comput. Electron. Agric..

[77]  Mladen Zrinjski,et al.  An automatic method for weed mapping in oat fields based on UAV imagery , 2020, Comput. Electron. Agric..

[78]  Joseph A. Shaw,et al.  Hyperspectral imaging and neural networks to classify herbicide-resistant weeds , 2019, Journal of Applied Remote Sensing.

[79]  Roland Gerhards,et al.  Multi-Temporal Site-Specific Weed Control of Cirsium arvense (L.) Scop. and Rumex crispus L. in Maize and Sugar Beet Using Unmanned Aerial Vehicle Based Mapping , 2018 .

[80]  R. Werle,et al.  Cover crops, hormones and herbicides: Priming an integrated weed management strategy. , 2020, Plant science : an international journal of experimental plant biology.

[81]  J L Monteith,et al.  23 – REMOTE SENSING IN AGRICULTURE: PROGRESS AND PROSPECTS , 1990 .

[82]  N. Chang,et al.  Combination of multispectral remote sensing, variable rate technology and environmental modeling for citrus pest management. , 2008, Journal of environmental management.

[83]  L. Deng,et al.  UAV-based multispectral remote sensing for precision agriculture: A comparison between different cameras , 2018, ISPRS Journal of Photogrammetry and Remote Sensing.

[84]  Takashi Kataoka,et al.  Image Segmentation between Crop and Weed using Hyperspectral Imaging for Weed Detection in Soybean Field , 2008 .

[85]  Salah Sukkarieh,et al.  Machine learning approaches for crop yield prediction and nitrogen status estimation in precision agriculture: A review , 2018, Comput. Electron. Agric..

[86]  H. Beckie,et al.  Our top 10 herbicide-resistant weed management practices. , 2017, Pest management science.

[87]  Urs Schmidhalter,et al.  Evaluating RGB Imaging and Multispectral Active and Hyperspectral Passive Sensing for Assessing Early Plant Vigor in Winter Wheat , 2018, Sensors.

[88]  M. Hasan,et al.  Weed Control Efficacy and Crop-Weed Selectivity of a New Bioherbicide WeedLock , 2021, Agronomy.

[89]  Md Nazirul Islam Sarker,et al.  Role of climate smart agriculture in promoting sustainable agriculture: a systematic literature review , 2019, International Journal of Agricultural Resources, Governance and Ecology.

[90]  David Lamb,et al.  PA—Precision Agriculture: Remote-Sensing and Mapping of Weeds in Crops , 2001 .

[91]  M. Neteler,et al.  Benefits of hyperspectral remote sensing for tracking plant invasions , 2011 .

[92]  Sreekala G. Bajwa,et al.  Development of spectral indices for identifying glyphosate-resistant weeds , 2020, Comput. Electron. Agric..