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基准和模型库 (待更新)

DOTA v1.0 数据集上的结果

骨干网络 mAP 角度编码方式 训练策略 显存占用 (GB) 推理时间 (fps) 增强方法 批量大小 配置 下载
ResNet50 (1024,1024,200) 59.44 oc 1x 3.45 15.6 - 2 rotated-reppoints-qbox_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 64.55 oc 1x 3.38 15.7 - 2 rotated-retinanet-hbox-oc_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 65.59 oc 1x 3.12 18.5 - 2 rotated_atss_hbb_r50_fpn_1x_dota_oc model | log
ResNet50 (1024,1024,200) 66.45 oc 1x 3.53 15.3 - 2 sasm-reppoints-qbox_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 68.42 le90 1x 3.38 16.9 - 2 rotated-retinanet-rbox-le90_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 68.79 le90 1x 2.36 22.4 - 2 rotated-retinanet-rbox-le90_r50_fpn_amp-1x_dota model | log
ResNet50 (1024,1024,200) 69.49 le135 1x 4.05 8.6 - 2 g_reppoints_r50_fpn_1x_dota_le135 model | log
ResNet50 (1024,1024,200) 69.51 le90 1x 4.40 24.0 - 2 rotated-retinanet-rbox-le90_r50_fpn_csl-gaussian_amp-1x_dota model | log
ResNet50 (1024,1024,200) 69.55 oc 1x 3.39 15.5 - 2 rotated-retinanet-hbox-oc_r50_fpn_gwd_1x_dota model | log
ResNet50 (1024,1024,200) 69.60 le90 1x 3.38 15.1 - 2 rotated-retinanet-hbox-le90_r50_fpn_kfiou_1x_dota model | log
ResNet50 (1024,1024,200) 69.63 le135 1x 3.45 16.1 - 2 cfa-qbox_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 69.76 oc 1x 3.39 15.6 - 2 rotated-retinanet-hbox-oc_r50_fpn_kfiou_1x_dota model | log
ResNet50 (1024,1024,200) 69.77 le135 1x 3.38 15.3 - 2 rotated-retinanet-hbox-le135_r50_fpn_kfiou_1x_dota model | log
ResNet50 (1024,1024,200) 69.79 le135 1x 3.38 17.2 - 2 rotated-retinanet-rbox-le135_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 69.80 oc 1x 3.54 12.4 - 2 r3det-oc_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 69.94 oc 1x 3.39 15.6 - 2 rotated-retinanet-hbox-oc_r50_fpn_kld_1x_dota model | log
ResNet50 (1024,1024,200) 70.18 oc 1x 3.23 15.6 - 2 r3det-tiny-oc_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 70.64 le90 1x 3.12 18.2 - 2 rotated_atss_obb_r50_fpn_1x_dota_le90 model | log
ResNet50 (1024,1024,200) 70.70 le90 1x 4.18 - 2 rotated-fcos-hbox-le90_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 71.28 le90 1x 4.18 - 2 rotated-fcos-le90_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 71.76 le90 1x 4.23 - 2 rotated-fcos-hbox-le90_r50_fpn_csl-gaussian_1x_dota model | log
ResNet50 (1024,1024,200) 71.83 oc 1x 3.54 12.4 - 2 r3det-oc_r50_fpn_kld-stable_1x_dota model | log
ResNet50 (1024,1024,200) 71.89 le90 1x 4.18 - 2 rotated-fcos-le90_r50_fpn_kld_1x_dota model | log
ResNet50 (1024,1024,200) 71.94 le135 1x 3.45 16.1 - 2 oriented-reppoints-qbox_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 72.29 le135 1x 3.19 18.8 - 2 rotated_atss_obb_r50_fpn_1x_dota_le135 model | log
ResNet50 (1024,1024,200) 72.68 oc 1x 3.62 12.2 - 2 r3det-oc_r50_fpn_kfiou-ln_1x_dota model | log
ResNet50 (1024,1024,200) 72.76 oc 1x 3.44 14.0 - 2 r3det-tiny-oc_r50_fpn_kld_1x_dota model | log
ResNet50 (1024,1024,200) 73.23 le90 1x 8.45 16.4 - 2 gliding-vertex-rbox_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 73.40 le90 1x 8.46 16.5 - 2 rotated-faster-rcnn-le90_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 73.45 oc 40e 3.45 16.1 - 2 cfa-qbox_r50_fpn_40e_dota model | log
ResNet50 (1024,1024,200) 73.91 le135 1x 3.14 15.5 - 2 s2anet-le135_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 74.19 le135 1x 2.17 17.4 - 2 s2anet-le135_r50_fpn_amp-1x_dota model | log
ResNet50 (1024,1024,200) 75.63 le90 1x 7.37 21.2 - 2 oriented-rcnn-le90_r50_fpn_amp-1x_dota model | log
ResNet50 (1024,1024,200) 75.69 le90 1x 8.46 16.2 - 2 oriented-rcnn-le90_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,200) 75.75 le90 1x 7.56 19.3 - 2 roi-trans-le90_r50_fpn_amp-1x_dota model | log
ReResNet50 (1024,1024,200) 75.99 le90 1x 7.71 13.3 - 2 redet-le90_re50_refpn_amp-1x_dota model | log
ResNet50 (1024,1024,200) 76.08 le90 1x 8.67 14.4 - 2 roi-trans-le90_r50_fpn_1x_dota model | log
ResNet50 (1024,1024,500) 76.50 le90 1x 17.5 MS+RR 2 rotated-retinanet-rbox-le90_r50_fpn_rr-1x_dota-ms model | log
ReResNet50 (1024,1024,200) 76.68 le90 1x 9.32 10.9 - 2 redet-le90_re50_refpn_1x_dota model | log
Swin-tiny (1024,1024,200) 77.51 le90 1x 10.9 - 2 roi-trans-le90_swin-tiny_fpn_1x_dota model | log
ResNet50 (1024,1024,500) 79.66 le90 1x 14.4 MS+RR 2 roi_trans_r50_fpn_1x_dota_ms_rr_le90 model | log
ReResNet50 (1024,1024,500) 79.87 le90 1x 10.9 MS+RR 2 redet-le90_re50_refpn_rr-1x_dota-ms model | log
ResNet50 (1024,1024,200) 68.75 le90 1x 6.25 - 2 h2rbox-le90_r50_fpn_adamw-1x_dota model | log
  • MS 表示多尺度图像增强。

  • RR 表示随机旋转增强。

上述模型都是使用 1 * 1080ti/2080ti 训练得到的,并且在 1 * 2080ti 上进行推理测试。