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1.
Data Brief ; 47: 109034, 2023 Apr.
Artigo em Inglês | MEDLINE | ID: mdl-36942098

RESUMO

Recent advancements in image analysis and interpretation technologies using computer vision techniques have shown potential for novel applications in clinical microbiology laboratories to support task automation aiming for faster and more reliable diagnostics. Deep learning models can be a valuable tool in the screening process, helping technicians spend less time classifying no-growth results and quickly separating the categories of tests that deserve further analysis. In this context, creating datasets with correctly classified images is fundamental for developing and improving such models. Therefore, a dataset of urine test Petri dishes images was collected following a standardized process, with controlled conditions of positioning and lighting. Image acquisition was conducted by applying a hardware chamber equipped with a led lightning source and a smartphone camera with 12 MP resolution. A software application was developed to support image classification and handling. Experienced microbiologists classified the images according to the positive, negative, and uncertain test results. The resulting dataset contains a total of 1500 images and can support the development of deep learning algorithms to classify urine exams according to their microbial growth.

2.
Int. j. high dilution res ; 21(2): 28-29, May 6, 2022.
Artigo em Inglês | LILACS, HomeoIndex - Homeopatia | ID: biblio-1396703

RESUMO

:The reaction of plants to ultra-high dilute substances (UHD) is well known, however, the signaling of the immediate effect still doesn't have a widely accepted methodology. The objective of this experiment was to use non-destructive sampling to find signs of UHD soon after application to plants. Methods:The control consisted of untreated purslane [Pilea microphylla (L.) Liebm] plants and imaged with a digital cameraMobius (CMOS 1270x720 pixels) directed at a laser beam (±680 nm) emitted over the plant canopy for 220 seconds, with 6-second intervals. Then, the same plants were treated with Fluoricum acidum30CH (Fl. ac.30),and ten minutes later, new images of the leaves were taken to verify the possible existence of reaction patterns of the plants generated by Biospeckle Laser (1,2). Results:Several types of imaging were performed to choose the image pattern, and the NIR type was chosen, generated by the Mobius camera connected directly to a laptop (Figure 1). The images were treated using the THSP algorithm, which generated data to compare the variation of pixel intensity with and without the presence of UHD. Conclusion:Research has shown that "Fl. ac. 30" is identified in purslane plants soon after application and this sign persists for at least 180 minutesafter application, with a significant difference from the control at the 1% probability level.


Assuntos
Simulação por Computador
3.
Braz. j. vet. res. anim. sci ; 58(n.esp): e174951, 2021. tab, ilus, graf
Artigo em Inglês | VETINDEX | ID: vti-764845

RESUMO

Vehicle-animal collisions represent a serious problem in roadway infrastructure. To avoid these roadway collisions, different mitigation systems have been applied in various regions of the world. In this article, a system for detecting animals on highways is presented using computer vision and machine learning algorithms. The models were trained to classify two groups of animals: capybaras and donkeys. Two variants of the convolutional neural network called Yolo (You only look once) were used, Yolov4 and Yolov4-tiny (a lighter version of the network). The training was carried out using pre-trained models. Detection tests were performed on 147 images. The accuracy results obtained were 84.87% and 79.87% for Yolov4 and Yolov4-tiny, respectively. The proposed system has the potential to improve road safety by reducing or preventing accidents with animals.(AU)


As colisões entre veículos e animais representam um sério problema na infraestrutura rodoviária. Para evitar tais acidentes, medidas mitigatórias têm sido aplicadas em diferentes regiões do mundo. Neste projeto é apresentado um sistema de detecção de animais em rodovias utilizando visão computacional e algoritmo de aprendizado de máquina. Os modelos foram treinados para classificar dois grupos de animais: capivaras e equídeos. Foram utilizadas duas variantes da rede neural convolucional chamada Yolo (você só vê uma vez) ­ Yolov4 e Yolov4-tiny (versão mais leve da rede) ­ e o treinamento foi realizado a partir de modelos pré-treinados. Testes de detecção foram realizados em 147 imagens e os resultados de precisão obtidos foram de 84,87% e 79,87% para Yolov4 e Yolov4-tiny, respectivamente. O sistema proposto tem o potencial de melhorar a segurança rodoviária reduzindo ou prevenindo acidentes com animais.(AU)


Assuntos
Animais , Simulação por Computador , Acidentes de Trânsito , Animais
4.
Braz. J. Vet. Res. Anim. Sci. (Online) ; 58(n.esp): e174951, 2021. tab, ilus, graf
Artigo em Inglês | LILACS, VETINDEX | ID: biblio-1348268

RESUMO

Vehicle-animal collisions represent a serious problem in roadway infrastructure. To avoid these roadway collisions, different mitigation systems have been applied in various regions of the world. In this article, a system for detecting animals on highways is presented using computer vision and machine learning algorithms. The models were trained to classify two groups of animals: capybaras and donkeys. Two variants of the convolutional neural network called Yolo (You only look once) were used, Yolov4 and Yolov4-tiny (a lighter version of the network). The training was carried out using pre-trained models. Detection tests were performed on 147 images. The accuracy results obtained were 84.87% and 79.87% for Yolov4 and Yolov4-tiny, respectively. The proposed system has the potential to improve road safety by reducing or preventing accidents with animals.(AU)


As colisões entre veículos e animais representam um sério problema na infraestrutura rodoviária. Para evitar tais acidentes, medidas mitigatórias têm sido aplicadas em diferentes regiões do mundo. Neste projeto é apresentado um sistema de detecção de animais em rodovias utilizando visão computacional e algoritmo de aprendizado de máquina. Os modelos foram treinados para classificar dois grupos de animais: capivaras e equídeos. Foram utilizadas duas variantes da rede neural convolucional chamada Yolo (você só vê uma vez) ­ Yolov4 e Yolov4-tiny (versão mais leve da rede) ­ e o treinamento foi realizado a partir de modelos pré-treinados. Testes de detecção foram realizados em 147 imagens e os resultados de precisão obtidos foram de 84,87% e 79,87% para Yolov4 e Yolov4-tiny, respectivamente. O sistema proposto tem o potencial de melhorar a segurança rodoviária reduzindo ou prevenindo acidentes com animais.(AU)


Assuntos
Animais , Simulação por Computador , Acidentes de Trânsito , Animais
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