A study on enabling Deep Learning in IoT for Disaster Management | Author : Aditya Raj | Abstract | Full Text | Abstract :With increasing population there is
equally higher risk of laosing precious life due to
natural calamities like Earthquakes, Floods,
landslides etc. every year. We can minimize this
risk by sensing the changes in advance and
providing advance information with the help of
exploding technologies. Internet of Things (IoT) is
one such promising technology which has gained
attention of researchers due to seamless
connectivity between people and object. IoT
represents a system where sensors are attached to
objects via internet and thus provides real time
data monitoring. The sensed data coming from IoT
systems are not streamed properly. These data can
be analyzed effectively by another promising
technology called Deep Learning (DL) that can
predict the likely possibility of a disaster threat.
With the available information sensed using IoT
devices incorporated withDeep Learning(DL)
technique, we can predict the occurrence of a
disaster looming in and thus minimizing the risk of
losing life.
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| Brain Tumor detection from brain MRI using Deep Learning | Author : Abhishek Anil, Aditya Raj, H Aravind Sarma, Naveen Chandran R, Deepa P L | Abstract | Full Text | Abstract :Health experts are increasingly taking
advantage of the benefits of most modern
technologies, thus generating a scalable
improvement in the area of health care. Because of
this, there is a paradigm shift from manual
monitoring towards more accurate virtual
monitoring with minimum percentage of error.
Advances in artificial intelligence (AI) led to
exciting solutions with high accuracy for medical
imaging technology and is a key method for
enhancing future applications. Detection of brain
tumor is a very difficult task in medical field.
Detection of brain tumor manually is time
consuming and requires large number of mri
images for cancer diagnosis. So, there is a need for
automatic brain tumor detection from Brain MR
images. Deep learning methods can achieve this
task. Different deep learning networks can be used
for the detection of brain tumors. The proposed
method comprises of a classification network
which classifies the input MR images into 2
classes: on with tumor and the second without
tumor. In this work, detection of brain tumor is
done via classification by retraining the classifier
using the technique known as transfer learning.
The obtained result shows that our method
outperforms the existing methods. |
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