Human Activity Recognition Using RGB Images and DCNN

碩士 === 國立臺北科技大學 === 電機工程系 === 107 === In recent years, activity recognition has received much attention. For example, recognizing daily activities of elderly people can detect abnormal activity of elder people living alone. This study aims to recognize daily activities of people by employing RG...

Full description

Bibliographic Details
Main Authors: CHEN, HONG-SYUAN, 陳宏瑄
Other Authors: TAN, TAN-HSU
Format: Others
Language:en_US
Published: 2019
Online Access:http://ndltd.ncl.edu.tw/handle/8h9yx7
id ndltd-TW-107TIT00441091
record_format oai_dc
spelling ndltd-TW-107TIT004410912019-11-13T05:22:50Z http://ndltd.ncl.edu.tw/handle/8h9yx7 Human Activity Recognition Using RGB Images and DCNN 基於DCNN與RGB圖像之日常活動辨識 CHEN, HONG-SYUAN 陳宏瑄 碩士 國立臺北科技大學 電機工程系 107 In recent years, activity recognition has received much attention. For example, recognizing daily activities of elderly people can detect abnormal activity of elder people living alone. This study aims to recognize daily activities of people by employing RGB activity images and deep convolutional neural network (DCNN). The human activity database collected by Cornell University which captured by Kinect device is employed to train the DCNN model and activities classification. The database contains 12 kinds of labeled activity images extracted from activity videos and the number of image samples are 68928. Firstly, in the pre-processing stage, activity images (240*320 pixel) are downsampled to 64*64, 32*32 and 16*16 pixels for improving the computational efficiency of the model and reducing the privacy invasiveness. In this study, two DCNN models (DCNN-1 and DCNN-2) are used for activity image classification via 4-fold cross validation. Experimental results show that DCNN-2(64*64 pixels) the precision, recall, specificity, F_1-score, and accuracy of 98.8%, 98.9%, 99.9%, 98.8%, and 99.9%, respectively, are achieved with 4-fold cross validation while DCNN-2 is employed which are superior to other existing systems, indicating the application potential of our work. TAN, TAN-HSU MUNKHJARGAL GOCHOO 譚旦旭 2019 學位論文 ; thesis 54 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立臺北科技大學 === 電機工程系 === 107 === In recent years, activity recognition has received much attention. For example, recognizing daily activities of elderly people can detect abnormal activity of elder people living alone. This study aims to recognize daily activities of people by employing RGB activity images and deep convolutional neural network (DCNN). The human activity database collected by Cornell University which captured by Kinect device is employed to train the DCNN model and activities classification. The database contains 12 kinds of labeled activity images extracted from activity videos and the number of image samples are 68928. Firstly, in the pre-processing stage, activity images (240*320 pixel) are downsampled to 64*64, 32*32 and 16*16 pixels for improving the computational efficiency of the model and reducing the privacy invasiveness. In this study, two DCNN models (DCNN-1 and DCNN-2) are used for activity image classification via 4-fold cross validation. Experimental results show that DCNN-2(64*64 pixels) the precision, recall, specificity, F_1-score, and accuracy of 98.8%, 98.9%, 99.9%, 98.8%, and 99.9%, respectively, are achieved with 4-fold cross validation while DCNN-2 is employed which are superior to other existing systems, indicating the application potential of our work.
author2 TAN, TAN-HSU
author_facet TAN, TAN-HSU
CHEN, HONG-SYUAN
陳宏瑄
author CHEN, HONG-SYUAN
陳宏瑄
spellingShingle CHEN, HONG-SYUAN
陳宏瑄
Human Activity Recognition Using RGB Images and DCNN
author_sort CHEN, HONG-SYUAN
title Human Activity Recognition Using RGB Images and DCNN
title_short Human Activity Recognition Using RGB Images and DCNN
title_full Human Activity Recognition Using RGB Images and DCNN
title_fullStr Human Activity Recognition Using RGB Images and DCNN
title_full_unstemmed Human Activity Recognition Using RGB Images and DCNN
title_sort human activity recognition using rgb images and dcnn
publishDate 2019
url http://ndltd.ncl.edu.tw/handle/8h9yx7
work_keys_str_mv AT chenhongsyuan humanactivityrecognitionusingrgbimagesanddcnn
AT chénhóngxuān humanactivityrecognitionusingrgbimagesanddcnn
AT chenhongsyuan jīyúdcnnyǔrgbtúxiàngzhīrìchánghuódòngbiànshí
AT chénhóngxuān jīyúdcnnyǔrgbtúxiàngzhīrìchánghuódòngbiànshí
_version_ 1719290655243501568