yjh0410 62a5b79e6a update 2 년 전
..
README.md 578dc295f4 redesign RTCDet 2 년 전
build.py 578dc295f4 redesign RTCDet 2 년 전
loss.py 578dc295f4 redesign RTCDet 2 년 전
matcher.py 578dc295f4 redesign RTCDet 2 년 전
rtcdet.py 578dc295f4 redesign RTCDet 2 년 전
rtcdet_backbone.py 578dc295f4 redesign RTCDet 2 년 전
rtcdet_basic.py 62a5b79e6a update 2 년 전
rtcdet_head.py 578dc295f4 redesign RTCDet 2 년 전
rtcdet_neck.py 578dc295f4 redesign RTCDet 2 년 전
rtcdet_pafpn.py 62a5b79e6a update 2 년 전
rtcdet_pred.py 578dc295f4 redesign RTCDet 2 년 전

README.md

RTCDet-v2: My Second Empirical Study of Real-Time Convolutional Object Detectors.

Model Scale Batch APtest
0.5:0.95
APtest
0.5
APval
0.5:0.95
APval
0.5
FLOPs
(G)
Params
(M)
Weight
RTCDet-N 640 8xb16
RTCDet-T 640 8xb16
RTCDet-S 640 8xb16
RTCDet-M 640 8xb16
RTCDet-L 640 8xb16
RTCDet-X 640
  • For training, we train my RTCDet series series with 300 epochs on COCO.
  • For data augmentation, we use the large scale jitter (LSJ), Mosaic augmentation and Mixup augmentation, following the setting of YOLOX, but we remove the rotation transformation which is used in YOLOX's strong augmentation.
  • For optimizer, we use AdamW with weight decay 0.05 and base per image lr 0.001 / 64.
  • For learning rate scheduler, we use linear decay scheduler.
  • Due to my limited computing resources, I can not train RTCDet-X with the setting of batch size=128.
Model Scale Batch APtest
0.5:0.95
APtest
0.5
APval
0.5:0.95
APval
0.5
FLOPs
(G)
Params
(M)
Weight
RTCDet-P 320 8xb16
RTCDet-P 416 8xb16
RTCDet-P 512 8xb16
RTCDet-P 640 8xb16