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Feature Embedding by Template Matching as a ResNet Block
Date
2022-01-01
Author
Görgün, Ada
Gürbüz, Yeti Z.
Alatan, Abdullah Aydın
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Convolution blocks serve as local feature extractors and are the key to success of the neural networks. To make local semantic feature embedding rather explicit, we reformulate convolution blocks as feature selection according to the best matching kernel. In this manner, we show that typical ResNet blocks indeed perform local feature embedding via template matching once batch normalization (BN) followed by a rectified linear unit (ReLU) is interpreted as arg-max optimizer. Following this perspective, we tailor a residual block that explicitly forces semantically meaningful local feature embedding through using label information. Specifically, we assign a feature vector to each local region according to the classes that the corresponding region matches. We evaluate our method on three popular benchmark datasets with several architectures for image classification and consistently show that our approach substantially improves the performance of the baseline architectures.
URI
https://hdl.handle.net/11511/107544
Conference Name
33rd British Machine Vision Conference Proceedings, BMVC 2022
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Department of Electrical and Electronics Engineering, Conference / Seminar
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A. Görgün, Y. Z. Gürbüz, and A. A. Alatan, “Feature Embedding by Template Matching as a ResNet Block,” presented at the 33rd British Machine Vision Conference Proceedings, BMVC 2022, London, İngiltere, 2022, Accessed: 00, 2023. [Online]. Available: https://hdl.handle.net/11511/107544.