Scopus Indexed Publications
Paper Details
- Title
-
BottleNet18: Deep Learning-Based Bottle Gourd Leaf Disease Classification
- Author
-
Md. Awlad Hossen Rony,
Kaniz Fatema,
Md. Zahid Hasan,
- Email
-
- Abstract
-
Plant disease classification
is often accomplished by visual assessment or during research facility
assessment which creates setbacks bringing about yield in loss when
diagnosis is completed. Plant disease detection through an automated
approach is advantageous because it minimizes the amount of monitoring
required in large crop farms and identifies disease signs at an early
stage, i.e., when they develop on plant leaves. Our suggested method
adds to the automatic recognition of plant diseases through a series of
processes that include pre-processing, analysis, and classification. In
this study, an unsharp masking filter utilizes to process the blurred
and the unsharpened part of the real images presents as a mask for
producing a sharpened resulting image. As an image enhancement, a green
fire blue filter is used to enrich the quality of images by increasing
the contrast, removal the colors, and thresholding the images. For the
verification of image quality, several statistics formulas such as PSNR,
MSE, SSIM and SNR are calculated in the dataset. And finally, a
proposed bottlenet18 deep learning architecture has been applied to
classify three different Bottle gourd diseases as Anthracnose,
Cercospora leaf spot, and Powdery mildew. In this work, we have measured
the performance based on the performance matrices with variations of
different optimizers and learning rates. The highest accuracy achieved
by using the proposed BottleNet18 architecture is 93.9987% with Adam
optimizer and 0.001 learning rate.
- Keywords
-
BottleNet18 , Bottle Gourd , Data augmentation , Green Fire Blue , Learning rate , Classification
- Journal or Conference Name
- 2021 24th International Conference on Computer and Information Technology (ICCIT)
- Publication Year
-
2021
- Indexing
-
scopus