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Tasks of Object Detection using Deep Learning Architectures
Publication year - 2019
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.l1099.10812s19
Subject(s) - deep learning , computer science , artificial intelligence , object detection , convolutional neural network , artificial neural network , machine learning , segmentation , object (grammar) , recurrent neural network , feature extraction , field (mathematics) , feed forward , feature (linguistics) , variety (cybernetics) , pattern recognition (psychology) , engineering , linguistics , philosophy , mathematics , pure mathematics , control engineering
Deep learning is a subset of the field of machine learning, which is a subfield of AI. The facts that differentiate deep learning networks in general from “canonical” feedforward multilayer networks are More neurons than previous networks, More complex ways of connecting layers, “Cambrian explosion” of computing power to train and Automatic feature extraction. Deep learning is defined as neural networks with a large number of parameters and layers in fundamental network architectures. Some of the network architectures are Convolutional Neural Networks, Recurrent Neural Networks Recursive Neural Networks, RCNN (Region Based CNN), Fast RCNN, Google Net, YOLO (You Only Look Once), Single Shot detectors, SegNet and GAN (Generative Adversarial Network). Different architectures work well with different types of Datasets. Object Detection is an important computer vision problem with a variety of applications. The tasks involved are classification, Object Localisation and instance segmentation. This paper will discuss how the different architectures are useful to detect the object.

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