Improving Fine-Grained Rice Leaf Disease Detection via Angular-Compactness Dual Loss Learning
About
Early detection of rice leaf diseases is critical, as rice is a staple crop supporting a substantial share of the world's population. Timely identification of these diseases enables more effective intervention and significantly reduces the risk of large-scale crop losses. However, traditional deep learning models primarily rely on cross entropy loss, which often struggles with high intra-class variance and inter-class similarity, common challenges in plant pathology datasets. To tackle this, we propose a dual-loss framework that combines Center Loss and ArcFace Loss to enhance fine-grained classification of rice leaf diseases. The method is applied into three state-of-the-art backbone architectures: InceptionNetV3, DenseNet201, and EfficientNetB0 trained on the public Rice Leaf Dataset. Our approach achieves significant performance gains, with accuracies of 99.6%, 99.2% and 99.2% respectively. The results demonstrate that angular margin-based and center-based constraints substantially boost the discriminative strength of feature embeddings. In particular, the framework does not require major architectural modifications, making it efficient and practical for real-world deployment in farming environments.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Leaf Disease Classification | Rice Leaf Images | Accuracy99.6 | 4 | |
| Leaf Disease Classification | Wheat Leaf Dataset | -- | 1 | |
| Leaf Disease Classification | Rice Leaf Dataset UCI | -- | 1 |