RAFA-Net: Region Attention Network For Food Items And Agricultural Stress Recognition
Asish Bera, Ondrej Krejcar, and Debotosh Bhattacharjee

TL;DR
RAFA-Net introduces a region attention mechanism that models long-range dependencies within images, improving recognition accuracy for food items and agricultural stress with state-of-the-art results on multiple datasets.
Contribution
This paper proposes RAFA-Net, a novel region attention network that enhances feature representation through long-range dependency modeling and context gating, achieving superior performance.
Findings
Achieved top-1 accuracy of 96.97% on MAFood-121 dataset.
Outperformed existing methods on agricultural stress datasets.
Demonstrated strong generalization across diverse food and plant disease datasets.
Abstract
Deep Convolutional Neural Networks (CNNs) have facilitated remarkable success in recognizing various food items and agricultural stress. A decent performance boost has been witnessed in solving the agro-food challenges by mining and analyzing of region-based partial feature descriptors. Also, computationally expensive ensemble learning schemes using multiple CNNs have been studied in earlier works. This work proposes a region attention scheme for modelling long-range dependencies by building a correlation among different regions within an input image. The attention method enhances feature representation by learning the usefulness of context information from complementary regions. Spatial pyramidal pooling and average pooling pair aggregate partial descriptors into a holistic representation. Both pooling methods establish spatial and channel-wise relationships without incurring extra…
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Taxonomy
TopicsAdvanced Chemical Sensor Technologies · Nutritional Studies and Diet · Spectroscopy and Chemometric Analyses
MethodsSoftmax · Attention Is All You Need · Average Pooling
