Semantic segmentation of microbial alterations based on SegFormer
Kafrelsheikh University · ITMO University · +5 more institutions
Abstract
Precise semantic segmentation of microbial alterations is paramount for their evaluation and treatment. This study focuses on harnessing the SegFormer segmentation model for precise semantic segmentation of strawberry diseases, aiming to improve disease detection accuracy under natural acquisition conditions.
Three distinct Mix Transformer encoders - MiT-B0, MiT-B3, and MiT-B5 - were thoroughly analyzed to enhance disease detection, targeting diseases such as Angular leaf spot, Anthracnose rot, Blossom blight, Gray mold, Leaf spot, Powdery mildew on fruit, and Powdery mildew on leaves. The dataset consisted of 2,450 raw images, expanded to 4,574 augmented images. The Segment Anything Model integrated into the Roboflow annotation tool facilitated efficient annotation and dataset preparation.
Citation impact
- FWCI
- 65.16
- Percentile
- 100%
- References
- 54
Authors
13Topics & keywords
- Segmentation
- Computer science
- Powdery mildew
- Artificial intelligence
- Annotation
- Overfitting
- Machine learning
- Pattern recognition (psychology)