Authors
Sina Ghassemi, Attilio Fiandrotti, Enrico Magli, Gianluca Francini
Publication date
2017/10/16
Conference
Multimedia Signal Processing (MMSP), 2017 IEEE 19th International Workshop on
Pages
1-6
Publisher
IEEE
Description
Fine-grained vehicle classification is a challenging task due to the subtle differences between vehicle classes. Several successful approaches to fine-grained image classification rely on part-based models, where the image is classified according to discriminative object parts. Such approaches require however that parts in the training images be manually annotated, a labor-intensive process. We propose a convolutional architecture realizing a transform network capable of discovering the most discriminative parts of a vehicle at multiple scales. We experimentally show that our architecture outperforms a baseline reference if trained on class labels only, and performs closely to a reference based on a part-model if trained on loose vehicle localization bounding boxes.
Total citations
201920202021202211
Scholar articles
S Ghassemi, A Fiandrotti, E Magli, G Francini - 2017 IEEE 19th International Workshop on Multimedia …, 2017