LOVI APP DEVELOPMENT BASED ON DEEP LEARNING MODEL AS A SMART ASSISTANT FOR LOW VISION
ii ABSTRACT LOVI APP DEVELOPMENT BASED ON DEEP LEARNING MODEL AS A SMART ASSISTANT FOR LOW VISION By Mitra Sofiyati NIM: 18118029 (Telecommunication Engineering Program) The prevalence of visually impaired in Indonesia is the highest compared to other disabilities. Low vision is one part o...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/66630 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | ii
ABSTRACT
LOVI APP DEVELOPMENT
BASED ON DEEP LEARNING MODEL
AS A SMART ASSISTANT FOR LOW VISION
By
Mitra Sofiyati
NIM: 18118029
(Telecommunication Engineering Program)
The prevalence of visually impaired in Indonesia is the highest compared to other
disabilities. Low vision is one part of the visually impaired who has a partial level
of vision. One of the difficulties experienced by low vision is understanding the
surrounding environment, especially those not familiar to them. The convenience
they need to understand the surrounding environment is to recognize objects and
navigate, especially outdoors, independently. One technology that we can use to
help with low vision problems is artificial intelligence, especially image
classification. On the other hand, smartphone technology users are prevalent in
society, including those with low vision. Smartphone technology can also help with
daily life because there are no additional costs to be incurred.
In this final project, an image classification system is created that helps low vision
to understand the surrounding environment. The system is built for the commonly
used Android platform, with the core being three TensorFlow lite models. The
application is named the LoVi application, with the core model referred to as the
Sherpa model. This model consists of three models for classifying sidewalks on the
road, classifying indoor objects, and nominal classification of rupiah banknotes.
Based on the experiments and tests, the application can meet the expected
specifications.
Keywords: low vision, smartphone, TensorFlow Lite |
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