Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function
Object detection is an important process in surveillance system to locate objects and it is considered as major application in computer vision. The Convolution Neural Network (CNN) based models have been developed by many researchers for object detection to achieve higher performance. However, exist...
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doaj-e02542dfdcbf40deb4f809fd79d25f462021-01-09T00:05:43ZengMDPI AGRemote Sensing2072-42922021-01-011320020010.3390/rs13020200Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation FunctionS. N. Shivappriya0M. Jasmine Pemeena Priyadarsini1Andrzej Stateczny2C. Puttamadappa3B. D. Parameshachari4Kumaraguru College of Technology, Coimbatore 641049, IndiaSchool of Electronic Engineering, Vellore Institute of Technology, Vellore 632014, IndiaChair of Geodesy, Gdansk University of Technology, 80232 Gdańsk, PolandDepartment of Electronics and Communication Engineering, Dayananda Sagar University, Bangalore 560078, IndiaDepartment of Telecommunication Engineering, GSSS Institute of Engineering and Technology for Women, Mysuru 570016, IndiaObject detection is an important process in surveillance system to locate objects and it is considered as major application in computer vision. The Convolution Neural Network (CNN) based models have been developed by many researchers for object detection to achieve higher performance. However, existing models have some limitations such as overfitting problem and lower efficiency in small object detection. Object detection in remote sensing hasthe limitations of low efficiency in detecting small object and the existing methods have poor localization. Cascade Object Detection methods have been applied to increase the learning process of the detection model. In this research, the Additive Activation Function (AAF) is applied in a Faster Region based CNN (RCNN) for object detection. The proposed AAF-Faster RCNN method has the advantage of better convergence and clear bounding variance. The Fourier Series and Linear Combination of activation function are used to update the loss function. The Microsoft (MS) COCO datasets and Pascal VOC 2007/2012 are used to evaluate the performance of the AAF-Faster RCNN model. The proposed AAF-Faster RCNN is also analyzed for small object detection in the benchmark dataset. The analysis shows that the proposed AAF-Faster RCNN model has higher efficiency than state-of-art Pay Attention to Them (PAT) model in object detection. To evaluate the performance of AAF-Faster RCNN method of object detection in remote sensing, the NWPU VHR-10 remote sensing data set is used to test the proposed method. The AAF-Faster RCNN model has mean Average Precision (mAP) of 83.1% and existing PAT-SSD512 method has the 81.7%mAP in Pascal VOC 2007 dataset.https://www.mdpi.com/2072-4292/13/2/200Additive Activation Functioncascade object detectionFaster Region based Convolution Neural NetworkFourier series and linear combination of activation functionremote sensing |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
S. N. Shivappriya M. Jasmine Pemeena Priyadarsini Andrzej Stateczny C. Puttamadappa B. D. Parameshachari |
spellingShingle |
S. N. Shivappriya M. Jasmine Pemeena Priyadarsini Andrzej Stateczny C. Puttamadappa B. D. Parameshachari Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function Remote Sensing Additive Activation Function cascade object detection Faster Region based Convolution Neural Network Fourier series and linear combination of activation function remote sensing |
author_facet |
S. N. Shivappriya M. Jasmine Pemeena Priyadarsini Andrzej Stateczny C. Puttamadappa B. D. Parameshachari |
author_sort |
S. N. Shivappriya |
title |
Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function |
title_short |
Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function |
title_full |
Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function |
title_fullStr |
Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function |
title_full_unstemmed |
Cascade Object Detection and Remote Sensing Object Detection Method Based on Trainable Activation Function |
title_sort |
cascade object detection and remote sensing object detection method based on trainable activation function |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2021-01-01 |
description |
Object detection is an important process in surveillance system to locate objects and it is considered as major application in computer vision. The Convolution Neural Network (CNN) based models have been developed by many researchers for object detection to achieve higher performance. However, existing models have some limitations such as overfitting problem and lower efficiency in small object detection. Object detection in remote sensing hasthe limitations of low efficiency in detecting small object and the existing methods have poor localization. Cascade Object Detection methods have been applied to increase the learning process of the detection model. In this research, the Additive Activation Function (AAF) is applied in a Faster Region based CNN (RCNN) for object detection. The proposed AAF-Faster RCNN method has the advantage of better convergence and clear bounding variance. The Fourier Series and Linear Combination of activation function are used to update the loss function. The Microsoft (MS) COCO datasets and Pascal VOC 2007/2012 are used to evaluate the performance of the AAF-Faster RCNN model. The proposed AAF-Faster RCNN is also analyzed for small object detection in the benchmark dataset. The analysis shows that the proposed AAF-Faster RCNN model has higher efficiency than state-of-art Pay Attention to Them (PAT) model in object detection. To evaluate the performance of AAF-Faster RCNN method of object detection in remote sensing, the NWPU VHR-10 remote sensing data set is used to test the proposed method. The AAF-Faster RCNN model has mean Average Precision (mAP) of 83.1% and existing PAT-SSD512 method has the 81.7%mAP in Pascal VOC 2007 dataset. |
topic |
Additive Activation Function cascade object detection Faster Region based Convolution Neural Network Fourier series and linear combination of activation function remote sensing |
url |
https://www.mdpi.com/2072-4292/13/2/200 |
work_keys_str_mv |
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