{ | |
"Summary": "The paper presents SepFormer, a novel transformer-based model for spectral domain image classification, demonstrating promising results on various datasets.", | |
"Strengths": [ | |
"Introduces a new architecture (SepFormer) tailored to spectral image processing.", | |
"Shows competitive performance on multiple datasets." | |
], | |
"Weaknesses": [ | |
"Limited analysis on generalization capabilities.", | |
"Potential limitations in real-world scenarios are not thoroughly addressed." | |
], | |
"Originality": 4, | |
"Quality": 3, | |
"Clarity": 4, | |
"Significance": 4, | |
"Questions": [ | |
"How does SepFormer perform on unseen or real-world spectral data?", | |
"What are the potential limitations and how can they be mitigated?" | |
], | |
"Limitations": "The paper should provide more analysis on generalization capabilities and potential limitations in real-world scenarios.", | |
"Ethical Concerns": false, | |
"Soundness": 3, | |
"Presentation": 4, | |
"Contribution": 4, | |
"Overall": 19, | |
"Confidence": 4, | |
"Decision": "accept with conditions" | |
} |