Matches in SemOpenAlex for { <https://semopenalex.org/work/W4306399631> ?p ?o ?g. }
- W4306399631 endingPage "5141" @default.
- W4306399631 startingPage "5141" @default.
- W4306399631 abstract "The object detection method based on deep learning convolutional neural network (CNN) significantly improves the detection performance of wheat head on wheat images obtained from the near ground. Nevertheless, for wheat head images of different stages, high density, and overlaps captured by the aerial-scale unmanned aerial vehicle (UAV), the existing deep learning-based object detection methods often have poor detection effects. Since the receptive field of CNN is usually small, it is not conducive to capture global features. The visual Transformer can capture the global information of an image; hence we introduce Transformer to improve the detection effect and reduce the computation of the network. Three object detection networks based on Transformer are designed and developed, including the two-stage method FR-Transformer and the one-stage methods R-Transformer and Y-Transformer. Compared with various other prevalent object detection CNN methods, our FR-Transformer method outperforms them by 88.3% for AP50 and 38.5% for AP75. The experiments represent that the FR-Transformer method can gratify requirements of rapid and precise detection of wheat heads by the UAV in the field to a certain extent. These more relevant and direct information provide a reliable reference for further estimation of wheat yield." @default.
- W4306399631 created "2022-10-17" @default.
- W4306399631 creator A5004962242 @default.
- W4306399631 creator A5026950276 @default.
- W4306399631 creator A5034632039 @default.
- W4306399631 creator A5042754454 @default.
- W4306399631 creator A5056613524 @default.
- W4306399631 creator A5059525096 @default.
- W4306399631 creator A5061553882 @default.
- W4306399631 creator A5077319306 @default.
- W4306399631 creator A5086767154 @default.
- W4306399631 date "2022-10-14" @default.
- W4306399631 modified "2023-10-02" @default.
- W4306399631 title "Detecting Wheat Heads from UAV Low-Altitude Remote Sensing Images Using Deep Learning Based on Transformer" @default.
- W4306399631 cites W1963659868 @default.
- W4306399631 cites W2117539524 @default.
- W4306399631 cites W2314684259 @default.
- W4306399631 cites W2727409292 @default.
- W4306399631 cites W2768005555 @default.
- W4306399631 cites W2884493029 @default.
- W4306399631 cites W2888979937 @default.
- W4306399631 cites W2898729889 @default.
- W4306399631 cites W2899128648 @default.
- W4306399631 cites W2901871634 @default.
- W4306399631 cites W2919839849 @default.
- W4306399631 cites W2950604226 @default.
- W4306399631 cites W2996041315 @default.
- W4306399631 cites W3001689964 @default.
- W4306399631 cites W3005863531 @default.
- W4306399631 cites W3011612089 @default.
- W4306399631 cites W3014641072 @default.
- W4306399631 cites W3015248898 @default.
- W4306399631 cites W3016743900 @default.
- W4306399631 cites W3039389508 @default.
- W4306399631 cites W3039502206 @default.
- W4306399631 cites W3044921708 @default.
- W4306399631 cites W3046728009 @default.
- W4306399631 cites W3064678530 @default.
- W4306399631 cites W3108944572 @default.
- W4306399631 cites W3118028009 @default.
- W4306399631 cites W3118053069 @default.
- W4306399631 cites W3118209175 @default.
- W4306399631 cites W3120119699 @default.
- W4306399631 cites W3124539583 @default.
- W4306399631 cites W3136441411 @default.
- W4306399631 cites W3136824855 @default.
- W4306399631 cites W3137394779 @default.
- W4306399631 cites W3158884431 @default.
- W4306399631 cites W3184235979 @default.
- W4306399631 cites W3186917005 @default.
- W4306399631 cites W3191773007 @default.
- W4306399631 cites W3198159864 @default.
- W4306399631 cites W3199936014 @default.
- W4306399631 cites W4206673866 @default.
- W4306399631 cites W4210692941 @default.
- W4306399631 cites W4214890960 @default.
- W4306399631 cites W4224065213 @default.
- W4306399631 cites W4281759326 @default.
- W4306399631 cites W4283836709 @default.
- W4306399631 cites W4286208835 @default.
- W4306399631 doi "https://doi.org/10.3390/rs14205141" @default.
- W4306399631 hasPublicationYear "2022" @default.
- W4306399631 type Work @default.
- W4306399631 citedByCount "7" @default.
- W4306399631 countsByYear W43063996312023 @default.
- W4306399631 crossrefType "journal-article" @default.
- W4306399631 hasAuthorship W4306399631A5004962242 @default.
- W4306399631 hasAuthorship W4306399631A5026950276 @default.
- W4306399631 hasAuthorship W4306399631A5034632039 @default.
- W4306399631 hasAuthorship W4306399631A5042754454 @default.
- W4306399631 hasAuthorship W4306399631A5056613524 @default.
- W4306399631 hasAuthorship W4306399631A5059525096 @default.
- W4306399631 hasAuthorship W4306399631A5061553882 @default.
- W4306399631 hasAuthorship W4306399631A5077319306 @default.
- W4306399631 hasAuthorship W4306399631A5086767154 @default.
- W4306399631 hasBestOaLocation W43063996311 @default.
- W4306399631 hasConcept C108583219 @default.
- W4306399631 hasConcept C119599485 @default.
- W4306399631 hasConcept C127413603 @default.
- W4306399631 hasConcept C153180895 @default.
- W4306399631 hasConcept C154945302 @default.
- W4306399631 hasConcept C165801399 @default.
- W4306399631 hasConcept C2776151529 @default.
- W4306399631 hasConcept C31972630 @default.
- W4306399631 hasConcept C41008148 @default.
- W4306399631 hasConcept C66322947 @default.
- W4306399631 hasConcept C81363708 @default.
- W4306399631 hasConceptScore W4306399631C108583219 @default.
- W4306399631 hasConceptScore W4306399631C119599485 @default.
- W4306399631 hasConceptScore W4306399631C127413603 @default.
- W4306399631 hasConceptScore W4306399631C153180895 @default.
- W4306399631 hasConceptScore W4306399631C154945302 @default.
- W4306399631 hasConceptScore W4306399631C165801399 @default.
- W4306399631 hasConceptScore W4306399631C2776151529 @default.
- W4306399631 hasConceptScore W4306399631C31972630 @default.
- W4306399631 hasConceptScore W4306399631C41008148 @default.
- W4306399631 hasConceptScore W4306399631C66322947 @default.
- W4306399631 hasConceptScore W4306399631C81363708 @default.