Child Safe Browser Extension: A Browser Extension to Detect Adultery and Violent Content to Make Safer Web for Children
Abstract
The world is changing with the pace of information technology revolution and now
a-days anybody can access to the internet including the children. Since birth These
21st century children are able to access to the di erent types of websites on the
internet because of their accessible devices but not every time the internet websites
are child friendly and children can view some violent and adultery images which can
a ect their childhood along with their mind. Furthermore, most of the people are
having business from websites what is called E-commerce nowadays but the issue is
that the business persons are adding ads to their websites for the pro ts. However,
sometimes these ads can be violent and also can contain adultery images which can
be viewed by a child. To stop, viewing these types of images the main way can
be stopping the access of the images from a child's device which can be done by
adding extension to their devices. Then parents can feel relief and children can
gain their knowledge by using the great side of the internet. So, to not access the
images a lter should be made but the main challenge is the making of lter which
will know a speci c work to maintain the extension. Also, none of the model can
give 100 percent. However, when an algorithm gets heavier then it will work slowly
and it will have an impact on the browser speed so to avoid this issue the model
need to make a lighter algorithm. Here, to make this extension happen and e client
it will need image processing and machine learning so that it can help to make a
virtual surveillance for the children and can make their mind fresh and creative. Our
system will be hosted in a cloud space and will be called by the extension with the
help of an API. In our system we used beautifulsoup4 for image scrapping from web
page. Augmentor is for the data augmentation. For a faster machine learning PIL
is our choice. And Tensorow performed extremely well in our Convolution Neural
Network.