The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition
In video action recognition based on deep learning, the design of the neural network is focused on how to acquire effective spatial information and motion information quickly. This paper proposes a kind of deep network that can obtain both spatial information and motion information in video classifi...
Main Authors: | , |
---|---|
Format: | Article |
Language: | English |
Published: |
Hindawi Limited
2021-01-01
|
Series: | Mathematical Problems in Engineering |
Online Access: | http://dx.doi.org/10.1155/2021/6670087 |
id |
doaj-6d107042011a4301bc511b13c4b68ea5 |
---|---|
record_format |
Article |
spelling |
doaj-6d107042011a4301bc511b13c4b68ea52021-02-15T12:53:08ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472021-01-01202110.1155/2021/66700876670087The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action RecognitionHongshi Ou0Jifeng Sun1South China University of Technology, School of Electronic and Information Engineering, No. 381 Wushan Road, Tianhe District, Guangzhou 510641, ChinaSouth China University of Technology, School of Electronic and Information Engineering, No. 381 Wushan Road, Tianhe District, Guangzhou 510641, ChinaIn video action recognition based on deep learning, the design of the neural network is focused on how to acquire effective spatial information and motion information quickly. This paper proposes a kind of deep network that can obtain both spatial information and motion information in video classification. It is called MDFs (the multidimensional motion features of deep feature map net). This method can be used to obtain spatial information and motion information in videos only by importing image frame data into a neural network. MDFs originate from the definition of 3D convolution. Multiple 3D convolution kernels with different information focuses are used to act on depth feature maps so as to obtain effective motion information at both spatial and temporal. On the other hand, we split the 3D convolution at space dimension and time dimension, and the spatial network feature map has reduced the dimensions of the original frame image data, which realizes the mitigation of computing resources of the multichannel grouped 3D convolutional network. In order to realize the region weight differentiation of spatial features, a spatial feature weighted pooling layer based on the spatial-temporal motion information guide is introduced to realize the attention to high recognition information. By means of multilevel LSTM, we realize the fusion between global semantic information acquisition and depth features at different levels so that the fully connected layers with rich classification information can provide frame attention mechanism for the spatial information layer. MDFs need only to act on RGB images. Through experiments on three universal experimental datasets of action recognition, UCF10, UCF11, and HMDB51, it is concluded that the MDF network can achieve an accuracy comparable to two streams (RGB and optical flow) that requires the import of both frame data and optical flow data in video classification tasks.http://dx.doi.org/10.1155/2021/6670087 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hongshi Ou Jifeng Sun |
spellingShingle |
Hongshi Ou Jifeng Sun The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition Mathematical Problems in Engineering |
author_facet |
Hongshi Ou Jifeng Sun |
author_sort |
Hongshi Ou |
title |
The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition |
title_short |
The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition |
title_full |
The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition |
title_fullStr |
The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition |
title_full_unstemmed |
The Multidimensional Motion Features of Spatial Depth Feature Maps: An Effective Motion Information Representation Method for Video-Based Action Recognition |
title_sort |
multidimensional motion features of spatial depth feature maps: an effective motion information representation method for video-based action recognition |
publisher |
Hindawi Limited |
series |
Mathematical Problems in Engineering |
issn |
1024-123X 1563-5147 |
publishDate |
2021-01-01 |
description |
In video action recognition based on deep learning, the design of the neural network is focused on how to acquire effective spatial information and motion information quickly. This paper proposes a kind of deep network that can obtain both spatial information and motion information in video classification. It is called MDFs (the multidimensional motion features of deep feature map net). This method can be used to obtain spatial information and motion information in videos only by importing image frame data into a neural network. MDFs originate from the definition of 3D convolution. Multiple 3D convolution kernels with different information focuses are used to act on depth feature maps so as to obtain effective motion information at both spatial and temporal. On the other hand, we split the 3D convolution at space dimension and time dimension, and the spatial network feature map has reduced the dimensions of the original frame image data, which realizes the mitigation of computing resources of the multichannel grouped 3D convolutional network. In order to realize the region weight differentiation of spatial features, a spatial feature weighted pooling layer based on the spatial-temporal motion information guide is introduced to realize the attention to high recognition information. By means of multilevel LSTM, we realize the fusion between global semantic information acquisition and depth features at different levels so that the fully connected layers with rich classification information can provide frame attention mechanism for the spatial information layer. MDFs need only to act on RGB images. Through experiments on three universal experimental datasets of action recognition, UCF10, UCF11, and HMDB51, it is concluded that the MDF network can achieve an accuracy comparable to two streams (RGB and optical flow) that requires the import of both frame data and optical flow data in video classification tasks. |
url |
http://dx.doi.org/10.1155/2021/6670087 |
work_keys_str_mv |
AT hongshiou themultidimensionalmotionfeaturesofspatialdepthfeaturemapsaneffectivemotioninformationrepresentationmethodforvideobasedactionrecognition AT jifengsun themultidimensionalmotionfeaturesofspatialdepthfeaturemapsaneffectivemotioninformationrepresentationmethodforvideobasedactionrecognition AT hongshiou multidimensionalmotionfeaturesofspatialdepthfeaturemapsaneffectivemotioninformationrepresentationmethodforvideobasedactionrecognition AT jifengsun multidimensionalmotionfeaturesofspatialdepthfeaturemapsaneffectivemotioninformationrepresentationmethodforvideobasedactionrecognition |
_version_ |
1714866494442045440 |