Object Detection by a Super-Resolution Method and a Convolutional Neural Networks. Na, B. & Fox, G., C. In 2018 IEEE International Conference on Big Data, Big Data, pages 2263-2269, 1, 2018. Institute of Electrical and Electronics Engineers Inc.. Paper doi abstract bibtex Recently with many blurless or slightly blurred images, convolutional neural networks classify objects with around 90 percent classification rates, even if there are variable sized images. However, small object regions or cropping of images make object detection or classification difficult and decreases the detection rates. In many methods related to convolutional neural network (CNN), Bilinear or Bicubic algorithms are popularly used to interpolate region of interests. To overcome the limitations of these algorithms, we introduce a super-resolution method applied to the cropped regions or candidates, and this leads to improve recognition rates for object detection and classification. Large object candidates comparable in size of the full image have good results for object detections using many popular conventional methods. However, for smaller region candidates, using our super-resolution preprocessing and region candidates, allows a CNN to outperform conventional methods in the number of detected objects when tested on the VOC2007 and MSO datasets.
@inproceedings{
title = {Object Detection by a Super-Resolution Method and a Convolutional Neural Networks},
type = {inproceedings},
year = {2018},
keywords = {CNN,convolution neural networks,deep learning,machine learning,object detection,super-resolution},
pages = {2263-2269},
month = {1},
publisher = {Institute of Electrical and Electronics Engineers Inc.},
day = {22},
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created = {2019-10-01T17:20:55.050Z},
accessed = {2019-08-21},
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profile_id = {42d295c0-0737-38d6-8b43-508cab6ea85d},
last_modified = {2020-05-11T14:43:33.323Z},
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abstract = {Recently with many blurless or slightly blurred images, convolutional neural networks classify objects with around 90 percent classification rates, even if there are variable sized images. However, small object regions or cropping of images make object detection or classification difficult and decreases the detection rates. In many methods related to convolutional neural network (CNN), Bilinear or Bicubic algorithms are popularly used to interpolate region of interests. To overcome the limitations of these algorithms, we introduce a super-resolution method applied to the cropped regions or candidates, and this leads to improve recognition rates for object detection and classification. Large object candidates comparable in size of the full image have good results for object detections using many popular conventional methods. However, for smaller region candidates, using our super-resolution preprocessing and region candidates, allows a CNN to outperform conventional methods in the number of detected objects when tested on the VOC2007 and MSO datasets.},
bibtype = {inproceedings},
author = {Na, Bokyoon and Fox, Geoffrey C.},
doi = {10.1109/BigData.2018.8622135},
booktitle = {2018 IEEE International Conference on Big Data, Big Data}
}
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