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- Title
Fast cropping method for proper input size of convolutional neural networks in underwater photography.
- Authors
Park, Jin‐Hyun; Choi, Young‐Kiu; Kang, Changgu
- Abstract
The convolutional neural network (CNN) is widely used in object detection and classification and shows promising results. However, CNN has the limitation of fixed input size. If the input image size of the CNN is different from the image size of the system to which the CNN is applied, additional processes, such as cropping, warping, or padding, are necessary. They take additional time to process these processes, and fast cutting methods are required for systems that require real‐time processing. The purpose of our system to which the CNN model will be applied is to classify fish species in real time, using cameras installed in a shallow stream. Therefore, in this paper, we propose a straightforward real‐time image cropping method for fast cutting to the proper input size of CNN. In the experiments, we evaluate the proposed method using CNNs (AlexNet, Vgg 16, Vgg 9, and GoogLeNet).
- Subjects
CONVOLUTIONAL neural networks; UNDERWATER photography; IMAGING systems; OPTIC disc
- Publication
Journal of the Society for Information Display, 2020, Vol 28, Issue 11, p872
- ISSN
1071-0922
- Publication type
Article
- DOI
10.1002/jsid.911