134548 |
vyskocj |
0.900 |
0.934 |
ResNeXt101: anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256], color dept = BGR; epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = BGR, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256] |
134829 |
vyskocj |
0.900 |
0.933 |
ResNeXt101 (+5 epochs with train+val): anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256], color dept = BGR, epochs = 40 + 5 with train+val; epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = BGR, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256],
and then set = train+val, epochs = +5 |
134728 |
vyskocj |
0.895 |
0.927 |
ResNet50 (train+val, greyscale): validation data used for training, color depth = greyscale, epochs = 40; set = training + validation, epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = greyscale, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256] |
134723 |
vyskocj |
0.894 |
0.928 |
ResNet50 (train+val in 80 epochs): validation data used for training, epochs = 80; set = training + validation, epochs = 80, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = BGR, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256] |
134181 |
vyskocj |
0.889 |
0.923 |
ResNet50 (aspect ratios + greyscale images): anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256], color depth = greyscale; epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = greyscale, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256] |
134232 |
vyskocj |
0.888 |
0.925 |
ResNet50 (train+val): validation data used for training; set = training + validation, epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = BGR, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256] |
134180 |
vyskocj |
0.882 |
0.918 |
ResNet50 (aspect ratios): anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256]; epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = BGR, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image], anchor aspect ratios = [0.1, 0.5, 1.0, 1.5], anchor sizes = [16, 32, 64, 128, 256] |
134137 |
pwc |
0.836 |
0.865 |
yolov5 1 45; |
134133 |
pwc |
0.832 |
0.858 |
yolo v5 05 45; |
134175 |
vyskocj |
0.830 |
0.863 |
ResNet50 (augmentations): Random Relative Resize = 0.8 +- 0.2, Cutout = [max of 4 boxes, 5 % of width/height of image]; epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), color depth = BGR, Random Relative Resize = 0.8 +- 0.2, Crop = 1400, Cutout = [max of 4 boxes, 5 % of width/height of image] |
134113 |
pwc |
0.829 |
0.852 |
yolov5 10 45; |
134099 |
pwc |
0.824 |
0.844 |
yolov5 20 45; |
134090 |
pwc |
0.824 |
0.844 |
yolov5 / 20-45; |
132583 |
pwc |
0.820 |
0.840 |
YOLO XL - 200 epochs with LR, ES, pretweights; |
132575 |
pwc |
0.810 |
0.826 |
Yolov5 Large - pretrained; yololarge - 200 epochs |
134095 |
vyskocj |
0.794 |
0.832 |
ResNet50 (baseline); epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), Random Relative Resize = 0.8+-0.1, Crop = 1400 |
134092 |
vyskocj |
0.794 |
0.832 |
ResNet50 (baseline); epochs = 40, learning rate = 0.0025, gamma 0.5 (in 20 and 30 epoch), Random Relative Resize = 0.8+-0.1, Crop = 1400 |
|
baseline |
0.747 |
0.763 |
Faster RCNN with resnet 101 backbone |
132592 |
pwc |
0.701 |
0.731 |
YOLOv5 XL - Only heads - 100 ep; |
132567 |
pwc |
0.649 |
0.675 |
YoloV5S with pre-trained weights; Another baseline for transfer learning |
132552 |
pwc |
0.649 |
0.675 |
YoloV5 baseline; Small model baseline |
134702 |
AIMultimediaLab |
0.216 |
0.319 |
Faster RCNN with VGG16 backbone, resized to 600x, anchors ratio [1: 1, 2.5: 1, 7: 1, 12: 1]; |