General Purpose (GenP) Bioimage Ensemble of Handcrafted and Learned Features with Data Augmentation
This work addresses bioimage classification for biological research, offering a generalizable method that avoids overfitting, though it appears incremental as it builds on existing ensemble and augmentation techniques.
The authors tackled bioimage classification by developing a General Purpose (GenP) ensemble that combines handcrafted and learned features with data augmentation, achieving state-of-the-art performance without dataset-specific tuning.
Bioimage classification plays a crucial role in many biological problems. In this work, we present a new General Purpose (GenP) ensemble that boosts performance by combining local features, dense sampling features, and deep learning approaches. First, we introduce three new methods for data augmentation based on PCA/DCT; second, we show that different data augmentation approaches can boost the performance of an ensemble of CNNs; and, finally, we propose a set of handcrafted/learned descriptors that are highly generalizable. Each handcrafted descriptor is used to train a different Support Vector Machine (SVM), and the different SVMs are combined with the ensemble of CNNs. Our method is evaluated on a diverse set of bioimage classification problems. Results demonstrate that the proposed GenP bioimage ensemble obtains state-of-the-art performance without any ad-hoc dataset tuning of parameters (thus avoiding the risk of overfitting/overtraining).