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Weed control is a global issue of great concern, and smart weeding robots equipped with advanced vision algorithms can perform efficient and precise weed control. Furthermore, the application of smart weeding robots has great potential for building environmentally friendly agriculture and saving human and material resources. However, most networks used in intelligent weeding robots tend to solely prioritize enhancing segmentation accuracy, disregarding the hardware constraints of embedded devices. Moreover, generalized lightweight networks are unsuitable for crop and weed segmentation tasks. Therefore, we propose an Attention-aided lightweight network for crop and weed semantic segmentation. The proposed network has a parameter count of 0.11M, Floating-point Operations count of 0.24G. Our network is based on an encoder and decoder structure, incorporating attention module to ensures both fast inference speed and accurate segmentation while utilizing fewer hardware resources. The dual attention block is employed to explore the potential relationships within the dataset, providing powerful regularization and enhancing the generalization ability of the attention mechanism, it also facilitates information integration between channels. To enhance the local and global semantic information acquisition and interaction, we utilize the refinement dilated conv block instead of 2D convolution within the deep network. This substitution effectively reduces the number and complexity of network parameters and improves the computation rate. To preserve spatial information, we introduce the spatial connectivity attention block. This block not only acquires more precise spatial information but also utilizes shared weight convolution to handle multi-stage feature maps, thereby further reducing network complexity. The segmentation performance of the proposed network is evaluated on three publicly available datasets: the BoniRob dataset, the Rice Seeding dataset, and the WeedMap dataset. Additionally, we measure the inference time and Frame Per Second on the NVIDIA Jetson Xavier NX embedded system, the results are 18.14 msec and 55.1 FPS. Experimental results demonstrate that our network maintains better inference speed on resource-constrained embedded systems and has competitive segmentation performance.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10768065 | PMC |
http://dx.doi.org/10.3389/fpls.2023.1320448 | DOI Listing |
Sci Rep
August 2025
Department of Computer Science and Engineering, Sasurie College of Engineering, Vijayamangalam, Tirupur, Tamil Nadu, India, 638056.
Weeds and crops contribute to a endless resistance for similar assets, which leads to potential declines in crop production and enlarged agricultural expenses. Conventional models of weed control like extensive pesticide use, appear with the hassle of environmental pollution and advancing weed battle. As the need for organic agricultural and pollutant-free products increases, there is a crucial need for revolutionary solutions.
View Article and Find Full Text PDFPest Manag Sci
June 2025
Department of Crop Science, Faculty of Agriculture, Universiti Putra Malaysia, Serdang, Malaysia.
Background: Bioherbicide applications are environmental-friendly approaches to control weeds toward sustainable agriculture. Hence, the current research focused on developing a ready-to-use nanoemulsion bioherbicide from the current less economical WeedLock bioherbicide, furthermore evaluating its weed control efficacy. Nanoemulsion composition comprised 2-undecanone (active ingredient), Termul 5030, POE(20)SMO, and water.
View Article and Find Full Text PDFNew Phytol
August 2025
Department of Agricultural Biology, Colorado State University, Fort Collins, CO, 80523, USA.
Crop production faces major challenges, including climate change, biodiversity loss, and global food insecurity, with the need to produce more food under increasingly difficult climatic conditions without negatively impacting ecosystems. Weeds are plants that have adapted to cropping systems despite intensive management efforts over centuries. We propose that weeds possess novel and useful sources of genetic variation that can be used to improve crops for abiotic and biotic stress tolerance.
View Article and Find Full Text PDFSci Rep
May 2025
Department of Plant Production, University of Torbat Heydarieh, Torbat Heydarieh, Iran.
Smart weed-crop discrimination is crucial for modern precision weed management. In this study, we aimed to develop a robust system for site-specific weed control in saffron fields by utilizing color images and a deep learning approach to distinguish saffron from four common weeds: flixweed, hoary cress, mouse barley, and wild garlic. A total of 504 images were taken in natural and unstructured field settings.
View Article and Find Full Text PDFSensors (Basel)
March 2025
College of Computer and Information Sciences, Fujian Agriculture and Forestry University, Fuzhou 350002, China.
Effective weed management is essential for protecting crop yields in cotton production, yet conventional deep learning approaches often falter in detecting small or occluded weeds and can be restricted by large parameter counts. To tackle these challenges, we propose YOLO-ACE, an advanced extension of YOLOv5s, which was selected for its optimal balance of accuracy and speed, making it well suited for agricultural applications. YOLO-ACE integrates a Context Augmentation Module (CAM) and Selective Kernel Attention (SKAttention) to capture multi-scale features and dynamically adjust the receptive field, while a decoupled detection head separates classification from bounding box regression, enhancing overall efficiency.
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