Motorcycle Classification in Urban Scenarios using Convolutional Neural Networks for Feature Extraction
Motorcycle Classification in Urban Scenarios using Convolutional Neural Networks for Feature Extraction
- Author(s): J.E. Espinosa ; S.A. Velastin ; J.W. Branch
- DOI: 10.1049/cp.2017.0155
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- Author(s): J.E. Espinosa ; S.A. Velastin ; J.W. Branch Source: 8th International Conference of Pattern Recognition Systems (ICPRS 2017), 2017 page ()
- Conference: 8th International Conference of Pattern Recognition Systems (ICPRS 2017)
- DOI: 10.1049/cp.2017.0155
- ISBN: 978-1-78561-652-5
- Location: Madrid, Spain
- Conference date: 11-13 July 2017
- Format: PDF
This paper presents a motorcycle classification system for urban scenarios using Convolutional Neural Network (CNN). Significant results on image classification has been achieved using CNNs at the expense of a high computational cost for training with thousands or even millions of examples. Nevertheless, features can be extracted from CNNs already trained. In this work AlexNet, included in the framework CaffeNet, is used to extract features from frames taken on a real urban scenario. The extracted features from the CNN are used to train a support vector machine (SVM) classifier to discriminate motorcycles from other road users. The obtained results show a mean accuracy of 99.40% and 99.29% on a classification task of three and five classes respectively. Further experiments are performed on a validation set of images showing a satisfactory classification.
Inspec keywords: support vector machines; neural nets; traffic engineering computing; feature extraction; image classification; motorcycles
Subjects: Image recognition; Knowledge engineering techniques; Neural computing techniques; Computer vision and image processing techniques; Traffic engineering computing
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