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Deep learning-based hybrid feature selection for the semantic segmentation of crops and weeds

Lamin L. Janneh, Youngjun Zhang, Mbemba Hydara, Zhongwei Cui

Year
2023
Citations
13

Abstract

Deep convolution neural networks are the recent algorithms used for robotic vision. However, the complex crop-weed vegetation and the background interferences required a robust feature representation. Therefore, we proposed a Dual-branch Deep neural network for semantic segmentation of crops and weeds. The branches utilized distinct feature extraction algorithms that extract essential semantic cues, and a decoder combined these features to improve the global contextual information. Finally, hybrid feature selection module(HSFM) utilized the decoder features to complement one another. Experimental results show the proposed method obtained mean intersection of union scores of 0.8613 and 0.9099 on CWFID and BoniRob datasets, respectively.

Keywords

Artificial intelligenceComputer sciencePattern recognition (psychology)Feature selectionFeature extractionSegmentationFeature (linguistics)Convolutional neural networkComplement (music)Intersection (aeronautics)

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