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1.
Plant Physiol ; 187(3): 1551-1576, 2021 11 03.
Artigo em Inglês | MEDLINE | ID: mdl-34618054

RESUMO

Measuring leaf area index (LAI) is essential for evaluating crop growth and estimating yield, thereby facilitating high-throughput phenotyping of maize (Zea mays). LAI estimation models use multi-source data from unmanned aerial vehicles (UAVs), but using multimodal data to estimate maize LAI, and the effect of tassels and soil background, remain understudied. Our research aims to (1) determine how multimodal data contribute to LAI and propose a framework for estimating LAI based on remote-sensing data, (2) evaluate the robustness and adaptability of an LAI estimation model that uses multimodal data fusion and deep neural networks (DNNs) in single- and whole growth stages, and (3) explore how soil background and maize tasseling affect LAI estimation. To construct multimodal datasets, our UAV collected red-green-blue, multispectral, and thermal infrared images. We then developed partial least square regression (PLSR), support vector regression, and random forest regression models to estimate LAI. We also developed a deep learning model with three hidden layers. This multimodal data structure accurately estimated maize LAI. The DNN model provided the best estimate (coefficient of determination [R2] = 0.89, relative root mean square error [rRMSE] = 12.92%) for a single growth period, and the PLSR model provided the best estimate (R2 = 0.70, rRMSE = 12.78%) for a whole growth period. Tassels reduced the accuracy of LAI estimation, but the soil background provided additional image feature information, improving accuracy. These results indicate that multimodal data fusion using low-cost UAVs and DNNs can accurately and reliably estimate LAI for crops, which is valuable for high-throughput phenotyping and high-spatial precision farmland management.


Assuntos
Produtos Agrícolas/anatomia & histologia , Aprendizado de Máquina , Folhas de Planta/anatomia & histologia , Dispositivos Aéreos não Tripulados/estatística & dados numéricos , Zea mays/anatomia & histologia , China , Produtos Agrícolas/crescimento & desenvolvimento , Produtos Agrícolas/fisiologia , Fazendas , Folhas de Planta/crescimento & desenvolvimento , Folhas de Planta/fisiologia , Zea mays/fisiologia
2.
Cogn Neuropsychiatry ; 24(4): 300-307, 2019 07.
Artigo em Inglês | MEDLINE | ID: mdl-31378169

RESUMO

Corlett, P. R. (2019. Factor one, familiarity and frontal cortex: A challenge to the two-factor theory of delusions. Cognitive Neuropsychiatry, 24(3), 165-177. doi: 10.1080/13546805.2019.1606706 ) raises two groups of challenges against the two-factor theory of delusions: One focuses on weighing "the evidence for … the two-factor theory"; the other aims to question "the logic of the two-factor theory" (ibid., p. 166). McKay, R. (2019. Measles, magic and misidentifications: A defence of the two-factor theory of delusions. Cognitive Neuropsychiatry, 24(3), 183-190. doi: 10.1080/13546805.2019.1607273 ) has robustly defended the two-factor theory against the first group. But the second group, which Corlett believes is in many aspects independent of the first group and Darby, R. R. (2019. A network-based response to the two-factor theory of delusion formation. Cognitive Neuropsychiatry, 24(3), 178-182. doi: 10.1080/13546805.2019.1606709 , p. 180) takes as "[t]he most important challenge to the two-factor theory raised by Dr. Corlett", has by large remained. Here I offer my two cents in response to the second group. More specifically, I argue that Corlett's challenges to the logic of the two-factor theory, concerning modularity, double dissociation and cognitive penetration, seem to be based on some misunderstandings of the two-factor theory.


Assuntos
Delusões , Reconhecimento Psicológico , Lobo Frontal , Humanos , Lógica , Masculino
3.
Front Plant Sci ; 14: 1268015, 2023.
Artigo em Inglês | MEDLINE | ID: mdl-37822341

RESUMO

Maize (Zea mays L.) is one of the most important crops, influencing food production and even the whole industry. In recent years, global crop production has been facing great challenges from diseases. However, most of the traditional methods make it difficult to efficiently identify disease-related phenotypes in germplasm resources, especially in actual field environments. To overcome this limitation, our study aims to evaluate the potential of the multi-sensor synchronized RGB-D camera with depth information for maize leaf disease classification. We distinguished maize leaves from the background based on the RGB-D depth information to eliminate interference from complex field environments. Four deep learning models (i.e., Resnet50, MobilenetV2, Vgg16, and Efficientnet-B3) were used to classify three main types of maize diseases, i.e., the curvularia leaf spot [Curvularia lunata (Wakker) Boedijn], the small spot [Bipolaris maydis (Nishik.) Shoemaker], and the mixed spot diseases. We finally compared the pre-segmentation and post-segmentation results to test the robustness of the above models. Our main findings are: 1) The maize disease classification models based on the pre-segmentation image data performed slightly better than the ones based on the post-segmentation image data. 2) The pre-segmentation models overestimated the accuracy of disease classification due to the complexity of the background, but post-segmentation models focusing on leaf disease features provided more practical results with shorter prediction times. 3) Among the post-segmentation models, the Resnet50 and MobilenetV2 models showed similar accuracy and were better than the Vgg16 and Efficientnet-B3 models, and the MobilenetV2 model performed better than the other three models in terms of the size and the single image prediction time. Overall, this study provides a novel method for maize leaf disease classification using the post-segmentation image data from a multi-sensor synchronized RGB-D camera and offers the possibility of developing relevant portable devices.

4.
Sci Data ; 9(1): 641, 2022 10 21.
Artigo em Inglês | MEDLINE | ID: mdl-36271097

RESUMO

Accurate and high-resolution crop yield and crop water productivity (CWP) datasets are required to understand and predict spatiotemporal variation in agricultural production capacity; however, datasets for maize and wheat, two key staple dryland crops in China, are currently lacking. In this study, we generated and evaluated a long-term data series, at 1-km resolution of crop yield and CWP for maize and wheat across China, based on the multiple remotely sensed indicators and random forest algorithm. Results showed that MOD16 products are an accurate alternative to eddy covariance flux tower data to describe crop evapotranspiration (maize and wheat RMSE: 4.42 and 3.81 mm/8d, respectively) and the proposed yield estimation model showed accuracy at local (maize and wheat rRMSE: 26.81 and 21.80%, respectively) and regional (maize and wheat rRMSE: 15.36 and 17.17%, respectively) scales. Our analyses, which showed spatiotemporal patterns of maize and wheat yields and CWP across China, can be used to optimize agricultural production strategies in the context of maintaining food security.


Assuntos
Produtos Agrícolas , Recursos Hídricos , Agricultura/métodos , China , Tecnologia de Sensoriamento Remoto , Triticum , Zea mays
5.
Front Plant Sci ; 13: 979103, 2022.
Artigo em Inglês | MEDLINE | ID: mdl-36733603

RESUMO

Timely and accurate pre-harvest estimates of maize yield are vital for agricultural management. Although many remote sensing approaches have been developed to estimate maize yields, few have been tested under lodging conditions. Thus, the feasibility of existing approaches under lodging conditions and the influence of lodging on maize yield estimates both remain unclear. To address this situation, this study develops a lodging index to quantify the degree of lodging. The index is based on RGB and multispectral images obtained from a low-altitude unmanned aerial vehicle and proves to be an important predictor variable in a random forest regression (RFR) model for accurately estimating maize yield after lodging. The results show that (1) the lodging index accurately describes the degree of lodging of each maize plot, (2) the yield-estimation model that incorporates the lodging index provides slightly more accurate yield estimates than without the lodging index at three important growth stages of maize (tasseling, milking, denting), and (3) the RFR model with lodging index applied at the denting (R5) stage yields the best performance of the three growth stages, with R2 = 0.859, a root mean square error (RMSE) of 1086.412 kg/ha, and a relative RMSE of 13.1%. This study thus provides valuable insight into the precise estimation of crop yield and demonstra\tes that incorporating a lodging stress-related variable into the model leads to accurate and robust estimates of crop grain yield.

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