Land Site Image Classification Using Machine Learning Algorithms

Author(s):  
G. Nagalakshmi ◽  
T. Sarath ◽  
S. Jyothi
2021 ◽  
Vol 11 (18) ◽  
pp. 8714
Author(s):  
Elena Chirikhina ◽  
Andrey Chirikhin ◽  
Sabina Dewsbury-Ennis ◽  
Francesco Bianconi ◽  
Perry Xiao

We present our latest research on skin characterizations by using Contact Capacitive Imaging and High-Resolution Ultrasound Imaging with Machine Learning algorithms. Contact Capacitive Imaging is a novel imaging technology based on the dielectric constant measurement principle, with which we have studied the skin water content of different skin sites and performed image classification by using pre-trained Deep Learning Neural Networks through Transfer Learning. The results show lips and nose have the lowest water content, whilst cheek, eye corner and under-eye have the highest water content. The classification yields up to 83.8% accuracy. High-Resolution Ultrasound Imaging is a state-of-the-art ultrasound technology, and can produce high-resolution images of the skin and superficial soft tissue to a vertical resolution of about 40 microns, with which we have studied the thickness of different skin layers, such as stratum corneum, epidermis and dermis, around different locations on the face and around different body parts. The results show the chin has the highest stratum corneum thickness, and the arm has the lowest stratum corneum thickness. We have also developed two feature-based image classification methods which yield promising results. The outcomes of this study could provide valuable guidelines for cosmetic/medical research, and methods developed in this study can also be extended for studying damaged skin or skin diseases. The combination of Contact Capacitive Imaging and High-Resolution Ultrasound Imaging could be a powerful tool for skin studies.


2020 ◽  
Vol 20 ◽  
pp. 100410
Author(s):  
Ashikur Rahman ◽  
Hasan Muhammad Abdullah ◽  
Md Tousif Tanzir ◽  
Md Jakir Hossain ◽  
Bhoktear M. Khan ◽  
...  

Electronics ◽  
2019 ◽  
Vol 8 (5) ◽  
pp. 588 ◽  
Author(s):  
Taylor Simons ◽  
Dah-Jye Lee

This paper explores a set of learned convolutional kernels which we call Jet Features. Jet Features are efficient to compute in software, easy to implement in hardware and perform well on visual inspection tasks. Because Jet Features can be learned, they can be used in machine learning algorithms. Using Jet Features, we make significant improvements on our previous work, the Evolution Constructed Features (ECO Features) algorithm. Not only do we gain a 3.7× speedup in software without loosing any accuracy on the CIFAR-10 and MNIST datasets, but Jet Features also allow us to implement the algorithm in an FPGA using only a fraction of its resources. We hope to apply the benefits of Jet Features to Convolutional Neural Networks in the future.


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