2024
DOI: 10.3390/agronomy14061119
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Research on Improved Road Visual Navigation Recognition Method Based on DeepLabV3+ in Pitaya Orchard

Lixue Zhu,
Wenqian Deng,
Yingjie Lai
et al.

Abstract: Traditional DeepLabV3+ image semantic segmentation methods face challenges in pitaya orchard environments characterized by multiple interference factors, complex image backgrounds, high computational complexity, and extensive memory consumption. This paper introduces an improved visual navigation path recognition method for pitaya orchards. Initially, DeepLabV3+ utilizes a lightweight MobileNetV2 as its primary feature extraction backbone, which is augmented with a Pyramid Split Attention (PSA) module placed a… Show more

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Cited by 3 publications
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“…Common lightweighting techniques include parameter pruning [27], sparsification, knowledge distillation [28], and the construction of lightweight network architectures. Zhu et al [29] made lightweight improvements to the DeepLabV3 model used for visual navigation in pitaya orchards, significantly reducing computational complexity and memory consumption by adopting MobileNetV2, thereby also enhancing navigation accuracy. However, the study lacks a comparative analysis with more performant lightweight backbone networks like MobileNetV3.…”
Section: Introductionmentioning
confidence: 99%
“…Common lightweighting techniques include parameter pruning [27], sparsification, knowledge distillation [28], and the construction of lightweight network architectures. Zhu et al [29] made lightweight improvements to the DeepLabV3 model used for visual navigation in pitaya orchards, significantly reducing computational complexity and memory consumption by adopting MobileNetV2, thereby also enhancing navigation accuracy. However, the study lacks a comparative analysis with more performant lightweight backbone networks like MobileNetV3.…”
Section: Introductionmentioning
confidence: 99%