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Table 5 Performance analysis of SpikeSegNet approach on illuminated dataset

From: SpikeSegNet-a deep learning approach utilizing encoder-decoder network with hourglass for spike segmentation and counting in wheat plant from visual imaging

 

Gamma 0.1

Gamma 0.3

Gamma 0.5

Gamma 1 (original image)

Gamma 1.5

Gamma 2.0

Gamma 2.5

Classification error rate (E1)

0.005349223

0.003051249

0.002396139

0.001693726

0.00177917

0.0020579

0.002359009

Classification error rate (E2)

0.083304137

0.042303843

0.040107991

0.04874738

0.06317883

0.08736489

0.108331881

Average_Precision

0.998094286

0.999318633

0.999408703

0.999325313

0.99911935

0.99879521

0.998452183

Average_Recall

0.996521902

0.997607927

0.998178134

0.99896944

0.99908922

0.99913291

0.998812372

Average_F_1_measure

0.997302422

0.998461999

0.998792781

0.999147219

0.99910416

0.99896389

0.998812369

Average_Accuracy

0.997302421

0.998462003

0.998792786

0.999147223

0.99910416

0.9989639

0.998812372

Average_Jaccard_Index_for_Spike_detection:

0.994627456

0.99693175

0.997591056

0.998298182

0.99821199

0.99793177

0.997629168