dc.description.abstract |
The plants interior spaces are used to improve the quality of indoor air and looks; however,
identification of specific plant species is a complex process. This paper discusses an
attempt towards categorization of indoor plants using deep learning methodologies. To
compile the dataset, 3000 images of 10 different plant species were taken from local
nurseries and personal gardens. Every image was marked according to the plant species
mentioned above, such as Heartleaf-philodendrons, Aglaonemas, Ball-Cactus, and others.
Data augmentation strategies were employed in order to expand the number of data
instances and improve model robustness. The dataset was also used for training and testing
a variety of deep and transfer learning models that include VGG19, EfficientNetB4,
EfficientNetB6, ResNet152 and custom CNN. The results of the experiments indicated that
VGG19 provided the highest accuracy which was 99. 58% which proves that it is useful
for indoor plant classification. The findings of this study suggest that deep learning
strategies could be effectively applied to optimize indoor plant management practices and
promote higher levels of environmental responsibility. It will be beneficial to conduct
future studies to identify more features and circumstances to increase the accuracy of the
classification models and use them in other fields |
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