Machine Learning in Sensors and Imaging

Machine learning is extending its applications in various fields, such as image processing, the Internet of Things, user interface, big data, manufacturing, management, etc. As data are required to build machine learning networks, sensors are one of the most important technologies. In addition, mach...

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Year of Publication:2022
Language:English
Physical Description:1 electronic resource (302 p.)
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spelling Nam, Hyoungsik edt
Machine Learning in Sensors and Imaging
Basel MDPI - Multidisciplinary Digital Publishing Institute 2022
1 electronic resource (302 p.)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Machine learning is extending its applications in various fields, such as image processing, the Internet of Things, user interface, big data, manufacturing, management, etc. As data are required to build machine learning networks, sensors are one of the most important technologies. In addition, machine learning networks can contribute to the improvement in sensor performance and the creation of new sensor applications. This Special Issue addresses all types of machine learning applications related to sensors and imaging. It covers computer vision-based control, activity recognition, fuzzy label classification, failure classification, motor temperature estimation, the camera calibration of intelligent vehicles, error detection, color prior model, compressive sensing, wildfire risk assessment, shelf auditing, forest-growing stem volume estimation, road management, image denoising, and touchscreens.
English
Technology: general issues bicssc
History of engineering & technology bicssc
star image
image denoising
reinforcement learning
maximum likelihood estimation
mixed Poisson–Gaussian likelihood
machine learning-based classification
non-uniform foundation
stochastic analysis
vehicle–pavement–foundation interaction
forest growing stem volume
coniferous plantations
variable selection
texture feature
random forest
red-edge band
on-shelf availability
semi-supervised learning
deep learning
image classification
machine learning
explainable artificial intelligence
wildfire
risk assessment
Naïve bayes
transmission-line corridors
image encryption
compressive sensing
plaintext related
chaotic system
convolutional neural network
color prior model
object detection
piston error detection
segmented telescope
BP artificial neural network
modulation transfer function
computer vision
intelligent vehicles
extrinsic camera calibration
structure from motion
convex optimization
temperature estimation
BLDC
electric machine protection
touchscreen
capacitive
display
SNR
stylus
laser cutting
quality monitoring
artificial neural network
burr formation
cut interruption
fiber laser
semi-supervised
fuzzy
noisy
real-world
plankton
marine
activity recognition
wearable sensors
imbalanced activities
sampling methods
path planning
Q-learning
neural network
YOLO algorithm
robot arm
target reaching
obstacle avoidance
3-0365-3753-8
3-0365-3754-6
Nam, Hyoungsik oth
language English
format eBook
author2 Nam, Hyoungsik
author_facet Nam, Hyoungsik
author2_variant h n hn
author2_role Sonstige
title Machine Learning in Sensors and Imaging
spellingShingle Machine Learning in Sensors and Imaging
title_full Machine Learning in Sensors and Imaging
title_fullStr Machine Learning in Sensors and Imaging
title_full_unstemmed Machine Learning in Sensors and Imaging
title_auth Machine Learning in Sensors and Imaging
title_new Machine Learning in Sensors and Imaging
title_sort machine learning in sensors and imaging
publisher MDPI - Multidisciplinary Digital Publishing Institute
publishDate 2022
physical 1 electronic resource (302 p.)
isbn 3-0365-3753-8
3-0365-3754-6
illustrated Not Illustrated
work_keys_str_mv AT namhyoungsik machinelearninginsensorsandimaging
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is_hierarchy_title Machine Learning in Sensors and Imaging
author2_original_writing_str_mv noLinkedField
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