Robotic Hand in Harvesting Using Neural Networks and CMU Algorithm
Keywords:
Harvesting, Agriculture, Robotic, Convolution Neural NetworksAbstract
Now- a- days in agriculture one of the major problem is Harvesting. Mainly the harvesting is being very difficult for the farmers. It will take long time to harvesting and there is a need for lot of man power and these days farmers are also facing workers scarcity. From all these we know one thing, we need to work without a human, that is machine and that machine needs to do work fast and efficient. In this work , we propose a machine which is used in harvesting of vegetables or fruits. The machine reduces the time duration and increases the efficiency in harvesting. The machine needs intelligence to manage all type of crops and different varieties in similar crops. So, we propose a system or machine called Robotic Hand. The Convolution Neural Networks (CNN) and Image AI Algorithms and CMU algorithms are used in the Robotic Hand for managing the intelligence in all types of crops like vegetables, Fruits etc. By using this Algorithm the time duration will be reduced and the efficiency will be increased in harvesting.
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