"A multi layer neural
network similar to artificial neural networks only differs in its architecture
and mainly built to recognize visual patterns from image pixels." (Nishu Garg et
al, "An Insight Into Deep Learning Architectures, Latent Query Features", 2018)
"In machine learning, a convolutional neural network is a class of deep, feed-forward artificial neural networks that has successfully been applied to analyzing visual imagery. CNNs use a variation of multilayer perceptrons designed to require minimal preprocessing. They are also known as shift invariant or space invariant artificial neural networks (SIANN), based on their shared-weights architecture and translation invariance characteristics." (V E Jayanthi, "Automatic Detection of Tumor and Bleed in Magnetic Resonance Brain Images", 2018)
"A special type of feed-forward neural network optimized for
image data processing. The key features of CNN architecture include sharing
weights, using pooling layers, implementing deep structures with multiple
hidden layers." (Lyudmila N. Tuzova et al, "Teeth and Landmarks Detection and
Classification Based on Deep Neural Networks", 2019)
"A type of artificial neural networks, which uses a set of
filters with tunable (learnable) parameters to extract local features from the
input data." (
"A convolutional neural network (CNN) is a type of artificial neural network used in image recognition and processing that is specifically designed to process pixel data by means of learnable filters." (Loris Nanni et al, "Digital Recognition of Breast Cancer Using TakhisisNet: An Innovative Multi-Head Convolutional Neural Network for Classifying Breast Ultrasonic Images", 2020)
"A convolutional neural network (CNN) is a type of artificial
neural network used in image recognition and processing that is specifically
designed to process pixel data. CNNs are powerful image processing, artificial
intelligence (AI) that use deep learning to perform both generative and
descriptive tasks, often using machine vision that includes image and video
recognition, along with recommender systems and natural language processing
(NLP)." (Mohammad F Hashmi et al, "Subjective and Objective Assessment for
Variation of Plant Nitrogen Content to Air Pollutants Using Machine
Intelligence", 2020)
"A neural network with a convolutional layer which does the mathematical operation of convolution in addition to the other layers of deep neural network." (S Kayalvizhi & D Thenmozhi, "Deep Learning Approach for Extracting Catch Phrases from Legal Documents", 2020)
"A special type of
neural networks used popularly to analyze photography and imagery." (Murad Al
Shibli, "Hybrid Artificially Intelligent Multi-Layer Blockchain and Bitcoin
Cryptology", 2020)
"In deep learning, a convolutional neural network is a class of deep neural networks, most commonly applied to analyzing visual imagery. CNNs use a variation of multilayer perceptrons designed to require minimal preprocessing." (R Murugan, "Implementation of Deep Learning Neural Network for Retinal Images", 2020)
"A class of deep neural networks applied to image processing where some of the layers apply convolutions to input data." (Mário P Véstias, "Convolutional Neural Network", 2021)
"A convolution neural network is a kind of ANN used in image recognition and processing of image data." (M Srikanth Yadav & R Kalpana, "A Survey on Network Intrusion Detection Using Deep Generative Networks for Cyber-Physical Systems", 2021)
"A multi-layer neural network similar to artificial neural
networks only differs in its architecture and mainly built to recognize visual
patterns from image pixels." (Udit Singhania & B K Tripathy, "Text-Based
Image Retrieval Using Deep Learning", 2021)
"A type of deep learning algorithm commonly applied in analyzing image inputs." (Jinnie Shin et al, "Automated Essay Scoring Using Deep Learning Algorithms", 2021)
"It is a class of deep neural networks, most commonly applied to analyzing visual imagery." (Sercan Demirci et al, "Detection of Diabetic Retinopathy With Mobile Application Using Deep Learning", 2021)
"They are a class of deep neural networks that are generally
used to analyze image data. They use convolution instead of simple matrix
multiplication in a few layers of the network. They have shared weights
architecture and have translation invariant characteristics." Vijayaraghavan
Varadharajan & J Rian Leevinson, "Next Generation of Intelligent Cities:
Case Studies from Europe", 2021)
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