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3 months ago

RADAM: Texture Recognition through Randomized Aggregated Encoding of Deep Activation Maps

Leonardo Scabini Kallil M. Zielinski Lucas C. Ribas Wesley N. Gonçalves Bernard De Baets Odemir M. Bruno

RADAM: Texture Recognition through Randomized Aggregated Encoding of Deep Activation Maps

Abstract

Texture analysis is a classical yet challenging task in computer vision for which deep neural networks are actively being applied. Most approaches are based on building feature aggregation modules around a pre-trained backbone and then fine-tuning the new architecture on specific texture recognition tasks. Here we propose a new method named \textbf{R}andom encoding of \textbf{A}ggregated \textbf{D}eep \textbf{A}ctivation \textbf{M}aps (RADAM) which extracts rich texture representations without ever changing the backbone. The technique consists of encoding the output at different depths of a pre-trained deep convolutional network using a Randomized Autoencoder (RAE). The RAE is trained locally to each image using a closed-form solution, and its decoder weights are used to compose a 1-dimensional texture representation that is fed into a linear SVM. This means that no fine-tuning or backpropagation is needed. We explore RADAM on several texture benchmarks and achieve state-of-the-art results with different computational budgets. Our results suggest that pre-trained backbones may not require additional fine-tuning for texture recognition if their learned representations are better encoded.

Code Repositories

scabini/RADAM
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-classification-on-dtdRADAM (ConvNeXt-L)
Accuracy: 84.0
image-classification-on-fmd-textureRADAM (ConvNeXt-L)
Accuracy (%): 95.2
image-classification-on-kth-tips2RADAM (ConvNeXt-XL)
Accuracy (%): 94.4

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