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Classification of Shellfish Recognition Based on Improved Faster R-CNN Framework of Deep Learning

Yiran Feng, Xueheng Tao, Eung-Joo Lee

Year
2021
Citations
18
Access
Open access

Abstract

In view of the current absence of any deep learning algorithm for shellfish identification in real contexts, an improved Faster R-CNN-based detection algorithm is proposed in this paper. It achieves multiobject recognition and localization through a second-order detection network and replaces the original feature extraction module with DenseNet, which can fuse multilevel feature information, increase network depth, and avoid the disappearance of network gradients. Meanwhile, the proposal merging strategy is improved with Soft-NMS, where an attenuation function is designed to replace the conventional NMS algorithm, thereby avoiding missed detection of adjacent or overlapping objects and enhancing the network detection accuracy under multiple objects. By constructing a real contexts shellfish dataset and conducting experimental tests on a vision recognition seafood sorting robot production line, we were able to detect the features of shellfish in different scenarios, and the detection accuracy was improved by nearly 4% compared to the original detection model, achieving a better detection accuracy. This provides favorable technical support for future quality sorting of seafood using the improved Faster R-CNN-based approach.

Keywords

Artificial intelligenceComputer scienceSortingPattern recognition (psychology)Fuse (electrical)Feature extractionFeature (linguistics)AlgorithmEngineering

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