Da Costa Longo, Leonardo Henrique [UNESP]Do Nascimento, Marcelo ZanchettaRoberto, Guilherme FreireMartins, Alessandro S.Dos Santos, Luiz Fernando Segato [UNESP]Neves, Leandro Alves [UNESP]2023-03-012023-03-012022-01-01International Conference on Systems, Signals, and Image Processing, v. 2022-June.2157-87022157-8672http://hdl.handle.net/11449/241595In this paper, we propose an approach to study the ensemble of handcrafted and deep learned features, as well as possible templates for associating them for the classification of histological images. The handcrafted features were calculated with fractal techniques and the deep learned features were extracted from multiple convolutional neural network architectures. The most relevant features from each ensemble, selected with a ranking algorithm, were analyzed by a heterogeneous ensemble of classifiers to avoid overfitting scenarios. The proposed method was applied in the context of histological images of breast cancer, colorectal cancer and liver tissue. The highest accuracies were values from 93.10% to 99.25%. These results allowed defining some standard templates for techniques on different kinds of histological images, for instance, the fractal descriptors when ensembled with deep features via transfer learning can provide the best results. The insights presented here are a relevant contribution to specialists interested in the field of histological images and developing techniques to support the detection and diagnostics of scientifically relevant diseases.engclassifier ensembledeep featuresfeature ensemblefractal descriptorsH&E imagesEnsembles of fractal descriptors with multiple deep learned features for classification of histological imagesTrabalho apresentado em evento10.1109/IWSSIP55020.2022.98544652-s2.0-85137162359