scholarly journals Designing deep CNN models based on sparse coding for aerial imagery: a deep-features reduction approach

2019 ◽  
Vol 52 (1) ◽  
pp. 221-239 ◽  
Author(s):  
Abdul Qayyum ◽  
Aamir Malik ◽  
Naufal M Saad ◽  
Moona Mazher
2017 ◽  
Vol 31 (8) ◽  
pp. 3587-3607 ◽  
Author(s):  
Abdul Qayyum ◽  
Aamir Saeed Malik ◽  
Naufal M. Saad ◽  
Mahboob Iqbal ◽  
Mohd Faris Abdullah ◽  
...  

Sensors ◽  
2020 ◽  
Vol 20 (8) ◽  
pp. 2363 ◽  
Author(s):  
Vaggelis Ntalianis ◽  
Nikos Dimitris Fakotakis ◽  
Stavros Nousias ◽  
Aris S. Lalos ◽  
Michael Birbas ◽  
...  

Effective management of chronic constrictive pulmonary conditions lies in proper and timely administration of medication. As a series of studies indicates, medication adherence can effectively be monitored by successfully identifying actions performed by patients during inhaler usage. This study focuses on the recognition of inhaler audio events during usage of pressurized metered dose inhalers (pMDI). Aiming at real-time performance, we investigate deep sparse coding techniques including convolutional filter pruning, scalar pruning and vector quantization, for different convolutional neural network (CNN) architectures. The recognition performance has been assessed on three healthy subjects following both within and across subjects modeling strategies. The selected CNN architecture classified drug actuation, inhalation and exhalation events, with 100%, 92.6% and 97.9% accuracy, respectively, when assessed in a leave-one-subject-out cross-validation setting. Moreover, sparse coding of the same architecture with an increasing compression rate from 1 to 7 resulted in only a small decrease in classification accuracy (from 95.7% to 94.5%), obtained by random (subject-agnostic) cross-validation. A more thorough assessment on a larger dataset, including recordings of subjects with multiple respiratory disease manifestations, is still required in order to better evaluate the method’s generalization ability and robustness.


2019 ◽  
Vol 7 (1) ◽  
pp. 277-282
Author(s):  
Mohammadi Aiman ◽  
Ruksar Fatima

Shore & Beach ◽  
2020 ◽  
pp. 3-13
Author(s):  
Richard Buzard ◽  
Christopher Maio ◽  
David Verbyla ◽  
Nicole Kinsman ◽  
Jacquelyn Overbeck

Coastal hazards are of increasing concern to many of Alaska’s rural communities, yet quantitative assessments remain absent over much of the coast. To demonstrate how to fill this critical information gap, an erosion and flood analysis was conducted for Goodnews Bay using an assortment of datasets that are commonly available to Alaska coastal communities. Measurements made from orthorectified aerial imagery from 1957 to 2016 show the shoreline eroded 0 to 15.6 m at a rate that posed no immediate risk to current infrastructure. Storm surge flood risk was assessed using a combination of written accounts, photographs of storm impacts, GNSS measurements, hindcast weather models, and a digital surface model. Eight past storms caused minor to major flooding. Wave impact hour calculations showed that the record storm in 2011 doubled the typical annual wave impact hours. Areas at risk of erosion and flooding in Goodnews Bay were identified using publicly available datasets common to Alaska coastal communities; this work demonstrates that the data and tools exist to perform quantitative analyses of coastal hazards across Alaska.


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