Film identification method based on improved deeplabv3+ for full-film double-ditch corn seedbed
Abstract
Keywords: fertilizer application, intelligent unmanned machine, full-film double-ditch corn seedbed, film identification method, deep learning, semantic segmentation, DeepLabv3+
DOI: 10.25165/j.ijabe.20231605.8288
Citation: Dai F, Li X Z, Shi R J, Zhang F W, Zhao W Y, Guo W J. Film identification method based on improved DeepLabV3+ for full-film double-ditch corn seedbed. Int J Agric & Biol Eng, 2023; 16(5): 165–172.
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Zhou L M, Jin S L, Liu C A, Xiong Y C, Si J T, Li X G, et al. Ridge-furrow and plastic-mulching tillage enhances maize-soil interactions: opportunities and challenges in a semiarid agroecosystem. Field Crops Research, 2012; 126: 181–188.
Dai F, Zhao W Y, Zhang F W, Ma H J, Xin S L, Ma M Y. Research progress analysis of furrow sowing with whole plastic-film mulching on double ridges technology and machine in northwest rainfed area. Transactions of the CSAM, 2019; 50(5): 1–16. (in Chinese)
Dai F, Guo W J, Song X F, Zhang Y, Shi R J, Wang F, Zhao W Y. Optimization of mechanized soil covering path based on the agronomic mode of full-film double-ditch with double-width filming. Int J Agric & Biol Eng, 2022; 15(1): 139–146.
Luo X W, Liao J, Hu L, Zhou Z Y, Zhang Z G, Zang Y, et al. Research progress of intelligent agricultural machinery and practice of unmanned farm in China. Journal of South China Agricultural University, 2021; 42(6): 8–17. (in Chinese)
Tang H, Xu C S, Wang Z M, Wang Q, Wang J W. Optimized design, monitoring system development and experiment for a long-belt finger-clip precision corn seed metering device. Frontiers in Plant Science, 2022; 13: 814747.
Liu C L, Lin H Z, Li Y M, Gong L, Miao Z H. Analysis on status and development trend of intelligent control technology for agricultural equipment. Transactions of the CSAM, 2020; 51(1): 1–18. (in Chinese)
Dai Y S, Zhong X C, Sun C M, Yang J, Liu T, Liu S P. Identification of fusarium head blight in wheatbased on image processing and Deeplabv3+ model. Journal of Chinese Agricultural Mechanization, 2021; 42(9): 209–215. (in Chinese)
Zhou J, He Y Q. Research progress on navigation path planning of agricultural machinery. Transactions of the CSAM, 2021; 52(9): 1–14. (in Chinese)
Mu R H, Zeng X Q. A review of deep learning research. KSII Transactions on Internet and Information Systems, 2019; 13: 1738–1764.
Wan S H, Goudos S. Faster R-CNN for multi-class fruit detection using a robotic vision system. Computers Networks, 2020; 168: 107036.
Sun Z T, Zhu S N, Gao Z J, Gu M Y, Zhang G L, Zhang H M. Recognition of grape growing areas in multispectral images based on band enhanced DeepLabv3+. Transactions of the CSAE, 2022; 38(7): 229–236. (in Chinese)
Mu T Y, Zhao W, Hu X Y, Li D. Rice lodging recognition method based on UAV remote sensing combined with the improved DeepLabV3+ model. Journal of China Agricultural University, 2022; 27(2): 143–154. (in Chinese)
Rao X Q, Zhu Y H, Zhang Y N, Yang H T, Zhang X M, Lin Y Y, et al. Navigation path recognition between crop ridges based on semantic segmentation. Transactions of the Chinese Society of Agricultural Engineering, 2021; 37(20): 179–186. (in Chinese)
Yang Y, Zhang Y L, Miao W, Zhang T, Chen L Q, Huang L L. Accurate identification and location of corn rhizome based on faster R-CNN. Transactions of the CSAM, 2018; 49(10): 46–53. (in Chinese)
Meng Q K, Yang X X, Zhang M, Guan H O. Recognition of unstructured field road scene based on semantic segmentation model. Transactions of the Chinese Society of Agricultural Engineering, 2021; 37(22): 152–160. (in Chinese)
Shorten C, Khoshgoftaar T M. A survey on image data augmentation for deep learning. Journal of big data, 2020; 6: 1–48.
Chen L C, Papandreou G, Kokkinos L, Murphy K, Yuille A L. DeepLab: semantic image segmentation with deep convolutional nets, atrous convolution, and fully connected CRFs. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2018; 40: 834–848.
Ji J, Li S T, Xiong J, Chen P, Miao Q G. Semantic image segmentation with propagating deep aggregation. IEEE Transactions on Instrumentation and Measurement, 2020; 69: 1.
Li Z Y, Wang R, Zhang W, Hu F M, Meng L K. Multiscale features supported DeepLabV3 optimization scheme for accurate water semantic segmentation. IEEE Access, 2019; 7: 155787–155804.
Fu H X, Meng D, Li W H, Wang Y C. Bridge Crack Semantic Segmentation Based on Improved Deeplabv3+. Journal of Marine Science and Engineering, 2021; 9: 671.
Zhang X F, Bian H N, Cai Y H, Zhang K Y, Li H. An improved tongue image segmentation algorithm based on Deeplabv3+ framework. IET Image Process, 2022; 16: 1473–1485.
Hu Z F, Zhao J, Luo Y, Ou J F. Semantic SLAM based on improved DeepLabv3+ in dynamic scenarios. IEEE Access, 2022; 10: 21160–21168.
Liao J, Chen M H, Zhang K, Zou Y, Zhang S, Zhu D Q. Segmentation of crop plant seedlings based on regional semantic and edge information fusion. Transactions of the CSAM, 2021; 52(12): 171–181. (in Chinese)
Buiu C, Dănăilă V R, Răduţă C N. MobileNetV2 ensemble for cervical precancerous lesions classification. Processes, 2020; 8: 595.
Yin X, Li W H, Li Z, Yi L L. Recognition of grape leaf diseases using MobileNetV3 and deep transfer learning. Int J Agric & Biol Eng, 2022; 15(3): 184–194.
Yuan X G, Li D, Sun P, Wang G, Ma Y L. Real-time counting and height measurement of nursery seedlings based on Ghostnet-YoloV4 network and binocular vision technology. Forests, 2022; 13: 1459.
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