scholarly journals Tumor detection of the thyroid and salivary glands using hyperspectral imaging and deep learning

2020 ◽  
Vol 11 (3) ◽  
pp. 1383 ◽  
Author(s):  
Martin Halicek ◽  
James D. Dormer ◽  
James V. Little ◽  
Amy Y. Chen ◽  
Baowei Fei
Sensors ◽  
2021 ◽  
Vol 21 (4) ◽  
pp. 1288
Author(s):  
Cinmayii A. Garillos-Manliguez ◽  
John Y. Chiang

Fruit maturity is a critical factor in the supply chain, consumer preference, and agriculture industry. Most classification methods on fruit maturity identify only two classes: ripe and unripe, but this paper estimates six maturity stages of papaya fruit. Deep learning architectures have gained respect and brought breakthroughs in unimodal processing. This paper suggests a novel non-destructive and multimodal classification using deep convolutional neural networks that estimate fruit maturity by feature concatenation of data acquired from two imaging modes: visible-light and hyperspectral imaging systems. Morphological changes in the sample fruits can be easily measured with RGB images, while spectral signatures that provide high sensitivity and high correlation with the internal properties of fruits can be extracted from hyperspectral images with wavelength range in between 400 nm and 900 nm—factors that must be considered when building a model. This study further modified the architectures: AlexNet, VGG16, VGG19, ResNet50, ResNeXt50, MobileNet, and MobileNetV2 to utilize multimodal data cubes composed of RGB and hyperspectral data for sensitivity analyses. These multimodal variants can achieve up to 0.90 F1 scores and 1.45% top-2 error rate for the classification of six stages. Overall, taking advantage of multimodal input coupled with powerful deep convolutional neural network models can classify fruit maturity even at refined levels of six stages. This indicates that multimodal deep learning architectures and multimodal imaging have great potential for real-time in-field fruit maturity estimation that can help estimate optimal harvest time and other in-field industrial applications.


Author(s):  
Tariq Sadad ◽  
Amjad Rehman ◽  
Asim Munir ◽  
Tanzila Saba ◽  
Usman Tariq ◽  
...  

Author(s):  
Stojan Trajanovski ◽  
Caifeng Shan ◽  
Pim J.C. Weijtmans ◽  
Susan G. Brouwer de Koning ◽  
Theo J. M. Ruers

Author(s):  
Daniel Vitor de Lucena ◽  
Anderson da Silva Soares ◽  
Clarimar José Coelho ◽  
Isabela Jubé Wastowski ◽  
Arlindo Rodrigues Galvão Filho

Brain tumor detection from MRI images is a challenging process due to high diversity in the tumor pixels of different peoples. Automatic detection has got wide spread acclaim because the manual detection by experts is time consuming and prone to error in judgment. Due to its high mortality rate, detection of tumor automatically is a new emerging technique in bio medical imaging. Here we present a review of few methods from simple thresholding to advanced deep learning methods for segmentation of tumor from MRI data. The segmentation of tumor methods is classified to image segmentation using gray level processing, machine learning and deep learning. The results of various methods are compared to find the best methods available. As medical imaging methods have improving day by day this review will help to understand emerging trends in brain tumor detection.


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