Attention-Driven Lightweight Model for Pigmented Skin Lesion Detection
Mingzhe Hu, Xiaofeng Yang

TL;DR
This paper introduces a lightweight, attention-based model for pigmented skin lesion detection that effectively handles class imbalance and achieves high accuracy with low computational cost.
Contribution
The study develops a novel lightweight model utilizing ghosted features and DFC attention, incorporating loss weighting to improve minority class detection.
Findings
Achieved 92.4% accuracy on HAM10000 dataset
Maintained high performance with reduced computational complexity
Effectively addressed class imbalance with loss weighting techniques
Abstract
This study presents a lightweight pipeline for skin lesion detection, addressing the challenges posed by imbalanced class distribution and subtle or atypical appearances of some lesions. The pipeline is built around a lightweight model that leverages ghosted features and the DFC attention mechanism to reduce computational complexity while maintaining high performance. The model was trained on the HAM10000 dataset, which includes various types of skin lesions. To address the class imbalance in the dataset, the synthetic minority over-sampling technique and various image augmentation techniques were used. The model also incorporates a knowledge-based loss weighting technique, which assigns different weights to the loss function at the class level and the instance level, helping the model focus on minority classes and challenging samples. This technique involves assigning different weights…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · Nonmelanoma Skin Cancer Studies · Oral Health Pathology and Treatment
MethodsFocus
