Vai al contenuto principale della pagina

Sensors in Agriculture . Volume 2



(Visualizza in formato marc)    (Visualizza in BIBFRAME)

Autore: Moshou Dimitrios Visualizza persona
Titolo: Sensors in Agriculture . Volume 2 Visualizza cluster
Pubblicazione: MDPI - Multidisciplinary Digital Publishing Institute, 2019
Descrizione fisica: 1 electronic resource (354 p.)
Soggetto non controllato: optical sensor
spectral analysis
response surface sampling
sensor evaluation
electromagnetic induction
multivariate water quality parameters
mandarin orange
crop inspection platform
SPA-MLR
object tracking
feature selection
simultaneous measurement
diseases
genetic algorithms
processing of sensed data
electrochemical sensors
thermal image
ECa-directed soil sampling
handheld
recognition patterns
salt concentration
clover-grass
bovine embedded hardware
weed control
soil
field crops
vineyard
connected dominating set
water depth sensors
SS-OCT
wheat
striped stem-borer
silage
geostatistics
detection
NIR hyperspectral imaging
electronic nose
machine learning
virtual organizations of agents
packing density
data validation and calibration
dataset
Wi-SUN
temperature sensors
geoinformatics
gas sensor
X-ray fluorescence spectroscopy
vegetable oil
photograph-grid method
Vitis vinifera
WSN distribution algorithms
laser-induced breakdown spectroscopy
irrigation
quality assessment
energy efficiency
wireless sensor network (WSN)
geo-information
Fusarium
texture features
weeds
discrimination
big data
soil moisture sensors
meat spoilage
land cover
stereo imaging
near infrared sensors
biological sensing
compound sensor
pest management
moisture
plant localization
heavy metal contamination
artificial neural networks
spectral pre-processing
moisture content
apparent soil electrical conductivity
data fusion
semi-arid regions
smart irrigation
back propagation model
wireless sensor network
energy balance
light-beam
fluorescent measurement
agriculture
precision agriculture
deep learning
spectroscopy
hulled barely
dielectric probe
RPAS
water supply network
rice leaves
mobile app
gradient boosted machines
hyperspectral camera
one-class
nitrogen
LiDAR
total carbon
chemometrics analysis
rice
agricultural land
on-line vis-NIR measurement
CARS
obstacle detection
stratification
neural networks
regression estimator
Kinect
proximity sensing
distributed systems
pest
noninvasive detection
texture feature
soil mapping
classification
soil salinity
visible and near-infrared reflectance spectroscopy
germination
computer vision
hyperspectral imaging
diffusion
dielectric dispersion
UAS
random forests
case studies
total nitrogen
thermal imaging
cameras
dry matter composition
near-infrared
salt tolerance
deep convolutional neural networks
soil type classification
water management
preprocessing methods
wireless sensor networks (WSN)
remote sensing image classification
precision plant protection
radar
spatial variability
GF-1 satellite
plant disease
naked barley
leaf area index
CIE-Lab
change of support
radiative transfer model
3D reconstruction
plant phenotyping
vine
near infrared
vegetation indices
remote sensing
greenhouse
time-series data
scattering
sensor
crop area
speckle
spatial data
grapevine breeding
wide field view
partial least squares-discriminant analysis
spiking
area frame sampling
chromium content
machine-learning
RGB-D sensor
pest scouting
PLS
Capsicum annuum
spatial-temporal model
drying temperature
boron tolerance
ambient intelligence
laser wavelength
fuzzy logic
dynamic weight
landslide
management zones
real-time processing
event detection
crop monitoring
apple shelf-life
rice field monitoring
wireless sensor
birth sensor
proximal sensor
Sommario/riassunto: Agriculture requires technical solutions for increasing production while lessening environmental impact by reducing the application of agro-chemicals and increasing the use of environmentally friendly management practices. A benefit of this is the reduction of production costs. Sensor technologies produce tools to achieve the abovementioned goals. The explosive technological advances and developments in recent years have enormously facilitated the attainment of these objectives, removing many barriers for their implementation, including the reservations expressed by farmers. Precision agriculture and ‘smart farming’ are emerging areas where sensor-based technologies play an important role. Farmers, researchers, and technical manufacturers are joining their efforts to find efficient solutions, improvements in production, and reductions in costs. This book brings together recent research and developments concerning novel sensors and their applications in agriculture. Sensors in agriculture are based on the requirements of farmers, according to the farming operations that need to be addressed.
Titolo autorizzato: Sensors in Agriculture  Visualizza cluster
ISBN: 3-03897-745-4
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910346858903321
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui