Abstract:
The latest advancements in the world of computer have altered the various
dramatically, in which agriculture is also included. It has been very important for
agricultural food industry to use latest and advanced technologies. The advance
technology can detect complex features, patterns and objects even from the pictures,
this ability has gained essential draught into number of fields, but identification of
different fruits is still complicated due to its unique shapes, colours and variety of
appearances. The mango fruit is major player in Pakistan’s economy, especially in
agricultural food products. Considering its ripeness and variety, the industry is exposed
to challenges in accurately identifying and classify its specific type, since the taste and
texture of the mango is entirely based on its ripeness which is why its ripeness plays a
central role in market and for buyers. To solve these hurdles, we have come up with
this revolutionary approach using the YOLOv5 (You Only Look Once) structure, a
modem designed object to detect the ripeness of the fruit and to further classify it. It is
planned with three goals: the first one is to correctly determine mangoes into pictures.
Secondly, to further classify it as ripe or unripe or other variations and lastly, to come
up with an app which not only enhances these procedures but ensures a substantial
development in this industry. The number of pictures included in our datasets of varied
forms of mangoes in Pakistan exceeds 10,000. The structures YOLOv5, roboflow, and
YOLOv8 project maturity status with precision of 95%, 92% and 90%, respectively.