LSTM Accelerator for Convolutional Object Identification

Deep Learning has dramatically advanced the state of the art in vision, speech and many other areas. Recently, numerous deep learning algorithms have been proposed to solve traditional artificial intelligence problems. In this paper, in order to detect the version that can provide the best trade-off...

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Main Authors: Alkiviadis Savvopoulos, Andreas Kanavos, Phivos Mylonas, Spyros Sioutas
Format: Article
Language:English
Published: MDPI AG 2018-10-01
Series:Algorithms
Subjects:
Online Access:http://www.mdpi.com/1999-4893/11/10/157
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spelling doaj-00f81173e2634fabaabc298e7c20522b2020-11-24T21:34:42ZengMDPI AGAlgorithms1999-48932018-10-01111015710.3390/a11100157a11100157LSTM Accelerator for Convolutional Object IdentificationAlkiviadis Savvopoulos0Andreas Kanavos1Phivos Mylonas2Spyros Sioutas3Computer Engineering and Informatics Department, University of Patras, Patras 26504, GreeceComputer Engineering and Informatics Department, University of Patras, Patras 26504, GreeceDepartment of Informatics, Ionian University, Corfu 49100, GreeceComputer Engineering and Informatics Department, University of Patras, Patras 26504, GreeceDeep Learning has dramatically advanced the state of the art in vision, speech and many other areas. Recently, numerous deep learning algorithms have been proposed to solve traditional artificial intelligence problems. In this paper, in order to detect the version that can provide the best trade-off in terms of time and accuracy, convolutional networks of various depths have been implemented. Batch normalization is also considered since it acts as a regularizer and achieves the same accuracy with fewer training steps. For maximizing the yield of the complexity by diminishing, as well as minimizing the loss of accuracy, LSTM neural net layers are utilized in the process. The image sequences are proven to be classified by the LSTM in a more accelerated manner, while managing better precision. Concretely, the more complex the CNN, the higher the percentages of exactitude; in addition, but for the high-rank increase in accuracy, the time was significantly decreased, which eventually rendered the trade-off optimal. The average improvement of performance for all models regarding both datasets used amounted to 42 % .http://www.mdpi.com/1999-4893/11/10/157batch normalizationconvolutional neural networksdeep learningimage classificationknowledge extractionLSTM neural networksrecommendation systems
collection DOAJ
language English
format Article
sources DOAJ
author Alkiviadis Savvopoulos
Andreas Kanavos
Phivos Mylonas
Spyros Sioutas
spellingShingle Alkiviadis Savvopoulos
Andreas Kanavos
Phivos Mylonas
Spyros Sioutas
LSTM Accelerator for Convolutional Object Identification
Algorithms
batch normalization
convolutional neural networks
deep learning
image classification
knowledge extraction
LSTM neural networks
recommendation systems
author_facet Alkiviadis Savvopoulos
Andreas Kanavos
Phivos Mylonas
Spyros Sioutas
author_sort Alkiviadis Savvopoulos
title LSTM Accelerator for Convolutional Object Identification
title_short LSTM Accelerator for Convolutional Object Identification
title_full LSTM Accelerator for Convolutional Object Identification
title_fullStr LSTM Accelerator for Convolutional Object Identification
title_full_unstemmed LSTM Accelerator for Convolutional Object Identification
title_sort lstm accelerator for convolutional object identification
publisher MDPI AG
series Algorithms
issn 1999-4893
publishDate 2018-10-01
description Deep Learning has dramatically advanced the state of the art in vision, speech and many other areas. Recently, numerous deep learning algorithms have been proposed to solve traditional artificial intelligence problems. In this paper, in order to detect the version that can provide the best trade-off in terms of time and accuracy, convolutional networks of various depths have been implemented. Batch normalization is also considered since it acts as a regularizer and achieves the same accuracy with fewer training steps. For maximizing the yield of the complexity by diminishing, as well as minimizing the loss of accuracy, LSTM neural net layers are utilized in the process. The image sequences are proven to be classified by the LSTM in a more accelerated manner, while managing better precision. Concretely, the more complex the CNN, the higher the percentages of exactitude; in addition, but for the high-rank increase in accuracy, the time was significantly decreased, which eventually rendered the trade-off optimal. The average improvement of performance for all models regarding both datasets used amounted to 42 % .
topic batch normalization
convolutional neural networks
deep learning
image classification
knowledge extraction
LSTM neural networks
recommendation systems
url http://www.mdpi.com/1999-4893/11/10/157
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