A novel herbal leaf identification and authentication Using deep learning neural network
Abstract
Herbal plants are plants that can be used as an alternative to the natural healing of
diseases. The existence of herbal plants is still not widely known by the public. It is due
to many types of medicinal plants so it requires special knowledge to recognize them. A
smart and accurate herbal leaf recognition system is needed to overcome this. This
study aims to identify and authenticate herbal leaves using the convolutional neural
network and Long Short-Term Memory (CNN-LSTM) methods. Identification was carried
out on nine types of herbal leaves divided into two-thirds of training data and one-third
of testing data. The results of the identification process were validated by other data not
included in training data and testing data, as well as leaf data other than the nine types
of leaves identified. The CNN-LSTM method shows good results in the identification
process, with an accuracy of 94.96%.
Collections
- LSP-Conference Proceeding [1874]