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Dataset in support of the Southampton doctoral thesis 'Efficient Video Recognition with Convolutional Neural Networks by Exploiting Temporal Correlation in Video Data

Dataset in support of the Southampton doctoral thesis 'Efficient Video Recognition with Convolutional Neural Networks by Exploiting Temporal Correlation in Video Data
Dataset in support of the Southampton doctoral thesis 'Efficient Video Recognition with Convolutional Neural Networks by Exploiting Temporal Correlation in Video Data
This dataset contains: Data for Figure 3.1, Figure.3.7 ,Figure.3.10, Figure.3.21 ,Figure.3.13 ,Figure.3.14, Figure.3.15, Figure.3.16, Figure.3.17, Figure.3.18. Table 4.1, Table 4.2, Table 4.3, Table 4.4
University of Southampton
Sabetsarvestani, Mohammadamin
f5c0e55f-6f0c-4f56-9d6d-7de19d6fb136
Sabetsarvestani, Mohammadamin
f5c0e55f-6f0c-4f56-9d6d-7de19d6fb136

Sabetsarvestani, Mohammadamin (2022) Dataset in support of the Southampton doctoral thesis 'Efficient Video Recognition with Convolutional Neural Networks by Exploiting Temporal Correlation in Video Data. University of Southampton doi:10.5258/SOTON/D2474 [Dataset]

Record type: Dataset

Abstract

This dataset contains: Data for Figure 3.1, Figure.3.7 ,Figure.3.10, Figure.3.21 ,Figure.3.13 ,Figure.3.14, Figure.3.15, Figure.3.16, Figure.3.17, Figure.3.18. Table 4.1, Table 4.2, Table 4.3, Table 4.4

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Data.xlsx - Text
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Readme.txt - Dataset
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More information

Published date: 2022

Identifiers

Local EPrints ID: 473998
URI: http://eprints.soton.ac.uk/id/eprint/473998
PURE UUID: 03401593-a5ea-4598-a21f-4667f85d0dca

Catalogue record

Date deposited: 08 Feb 2023 17:44
Last modified: 05 May 2023 20:15

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Contributors

Creator: Mohammadamin Sabetsarvestani

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