Leveraging robust CNN architectures for real-time object recognition from conveyor belt
Date
2023-01Publisher
Brac UniversityAuthor
Moon, Nowrin TasnimSiddiqua, Sabiha Afrin
Parvin, Shahana
Muntaha, Sidratul
Hassan, K.M. Mehedi
Metadata
Show full item recordAbstract
In the innovative era, the problem of recognizing undesirable objects and individuals
on conveyor belts is addressed by various architectural or algorithmic approaches.
Conveyor belts are those by which things go in a straight line for transportation,
and it works as an object-carrying medium. Sometimes some unwanted objects go
through the belt mistakenly, which can be very dangerous. Moreover, detection
accuracy is much needed to avoid such deadly occurrences. Better accuracy can be
achieved by performing detection in real-time. Furthermore, this upgraded system
will assist individuals by lowering the danger of any accidents and provide a real-time
example of an airport conveyor belt by detecting any unwanted moving objects with
the help of a camera sensor and by applying different algorithms and methods of
the neural network. Therefore, in this paper, we have implemented a few algorithms
that comprise a customized Convolutional Neural Network, YOLOv5, YOLOv7, and
Vision Transformer as well as some Transfer learning methods over a few pre-trained
models such as VGG16, ResNet50, and MobileNetv2 to produce a better strategy
on our customized dataset to boost the accuracy of recognition.