Abstract
In agricultural production, periodic monitoring and determination of the state of crops are required. An additional complexity is the multicomponent structure of the analyzed images. For the purpose of intelligent analysis of agricultural fields, RGB image databases were formed and divided into four classes. An analysis of variants of deep neural network (DNN) architectures based on U-net is carried out. DNN has been developed for the segmentation of problem areas in fields. An experimental quality assessment was carried out on the DeepLabV3 architecture in combination with ResNet50. The constructed DNN family based on DeepLabV3 with ResNet50 showed efficiency of distribution and sufficient speed in segmentation of fragments of agricultural fields and determination of the state of crops. It is established that the increase in accuracy of segmentation of agricultural field images according to the “dice coefficient” criterion is limited by the resolution and quality of manual marking of images.
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The publication has been prepared with the financial support of the RFBR under project No. 20-37-90142.
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Rogachev, A., Belousov, I., Rogachev, D. (2023). Semantic Image Segmentation of Agricultural Field Problem Areas Using Deep Neural Networks Based on the DeepLabV3 Model. In: Shakya, S., Tavares, J.M.R.S., Fernández-Caballero, A., Papakostas, G. (eds) Fourth International Conference on Image Processing and Capsule Networks. ICIPCN 2023. Lecture Notes in Networks and Systems, vol 798. Springer, Singapore. https://doi.org/10.1007/978-981-99-7093-3_30
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