Table 8. The techniques and datasets used for RBC classification.
Author | Database | Segmentation | Features | Enhancement | Classification |
---|---|---|---|---|---|
Du et al. (2019) | 17,933 samples from the hospital | ImageNet model | Morphological feature | Nil | CNN model |
Sampathila, Shet & Basu (2018) | Leishman-stained thin blood smear slides | RGB color based | GLCM | Color space | GUI |
Kihm et al. (2018) | 4,000 Manually classified images | Nil | Shape, size | By convolution of NN | CNN |
Imran & Ahmad (2017) | ALL-IDB1 108 images | Statistical based thresholding | Morphological | Rayleigh distribution | SVM and ELM |
Das, Maiti & Chakraborty (2018) | 950 blood cells | Marker-controlled watershed algorithm | Mean intensity, standard deviation, skewness, kurtosis and entropy | Special Fuzzy C-mean | Random forest |
Yi, Moon & Javidi (2016) | 117 images Manual collection | Marker-controlled watershed transform | Area, perimeter, circulatory etc. | Watershed transform algorithm | Gabor-filtered holographic |
Abood, Karam & Hluot (2017) | Nil | Clustering | Shape and color | Fuzzy logic | |
Xu et al. (2017) | 7,000 single RBCs | Nil | Shape | Geometric transformations | Deep CNN |
Acharya & Kumar (2017) | 1,000 images manually collected | K-medoids algorithm | Area, perimeter, diameter, shape, geometric | Nil | Modified watershed transform |