模型性能Benchmark
说明
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测试条件:
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测试开发板:J6E。
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测试核心数:单核。
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性能数据获取频率设置为:5分钟时间内性能参数的平均值。
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Python版本:Python3.10。
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模型来源:OE包内
samples/ucp_tutorial/dnn/ai_benchmark/j6路径下的模型。 -
运行环境:Linux。
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缩写说明:
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C = 计算量,单位为GOPs(十亿次运算/秒)。此数据通过调用 hbm_perf 接口获得。
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FPS = 每秒帧率。此数据在开发板多线程运行ai_benchmark示例包/script路径下各模型子文件夹的 fps.sh 脚本获取,包含后处理。
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ITC = 推理耗时,单位为ms(毫秒)。此数据在开发板单线程运行ai_benchmark示例包/script路径下各模型子文件夹的 latency.sh 脚本获取,不含后处理。
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TCPP = 后处理耗时,单位为ms(毫秒)。此数据在开发板单线程运行ai_benchmark示例包/script路径下各模型子文件夹的 latency.sh 脚本获取。
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RV = 单次推理读取数据量,单位为mb(兆比特)。此数据通过调用 hbm_perf 接口获得。
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WV = 单次推理写入数据量,单位为mb(兆比特)。此数据通过调用 hbm_perf 接口获得。
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模型主要性能数据
| MODEL NAME | INPUT SIZE | C(GOPs) | FPS | ITC(ms) | TCPP(ms) | ACCURACY | Dataset |
|---|---|---|---|---|---|---|---|
| MobileNetv1 | 1x3x224x224 | 1.14 | 4594.40 | 0.466 | 0.033 | Top1: 0.7374(FLOAT)/0.7295(INT8) | ImageNet |
| MobileNetv2 | 1x3x224x224 | 0.63 | 4591.90 | 0.487 | 0.033 | Top1: 0.7218(FLOAT)/0.7146(INT8) | ImageNet |
| ResNet50 | 1x3x224x224 | 7.72 | 1152.80 | 1.161 | 0.033 | Top1: 0.7704(FLOAT)/0.7673(INT8) | ImageNet |
| GoogleNet | 1x3x224x224 | 3.00 | 2858.20 | 0.636 | 0.032 | Top1: 0.7018(FLOAT)/0.6998(INT8) | ImageNet |
| EfficientNet_Lite0 | 1x224x224x3 | 0.77 | 4068.20 | 0.559 | 0.032 | Top1: 0.7479(FLOAT)/0.7454(INT8) | ImageNet |
| EfficientNet_Lite1 | 1x240x240x3 | 1.20 | 3231.60 | 0.624 | 0.032 | Top1: 0.7652(FLOAT)/0.7614(INT8) | ImageNet |
| EfficientNet_Lite2 | 1x260x260x3 | 1.72 | 2478.80 | 0.723 | 0.032 | Top1: 0.7734(FLOAT)/0.7697(INT8) | ImageNet |
| EfficientNet_Lite3 | 1x280x280x3 | 2.77 | 1898.20 | 0.841 | 0.032 | Top1: 0.7917(FLOAT)/0.7896(INT8) | ImageNet |
| EfficientNet_Lite4 | 1x300x300x3 | 5.11 | 1300.50 | 1.082 | 0.032 | Top1: 0.8063(FLOAT)/0.8043(INT8) | ImageNet |
| Vargconvnet | 1x3x224x224 | 9.06 | 1464.80 | 0.974 | 0.032 | Top1: 0.7793(FLOAT)/0.7770(INT8) | ImageNet |
| Efficientnasnet_m | 1x3x300x300 | 4.53 | 1477.10 | 0.971 | 0.032 | Top1: 0.7935(FLOAT)/0.7923(INT8) | ImageNet |
| Efficientnasnet_s | 1x3x280x280 | 1.44 | 3327.70 | 0.590 | 0.031 | Top1: 0.7441(FLOAT)/0.7524(INT8) | ImageNet |
| ResNet18 | 1x3x224x224 | 3.63 | 2567.80 | 0.671 | 0.032 | Top1: 0.7170(FLOAT)/0.7162(INT8) | ImageNet |
| YOLOv2_Darknet19 | 1x3x608x608 | 62.94 | 227.64 | 4.712 | 0.293 | [IoU=0.50:0.95]= 0.2760(FLOAT)/0.2700(INT8) | COCO |
| YOLOv3_Darknet53 | 1x3x416x416 | 65.86 | 210.85 | 5.101 | 1.611 | [IoU=0.50:0.95]= 0.3370(FLOAT)/0.3360(INT8) | COCO |
| YOLOv5x_v2.0 | 1x3x672x672 | 243.85 | 62.44 | 16.437 | 5.683 | [IoU=0.50:0.95]= 0.4810(FLOAT)/0.4670(INT8) | COCO |
| SSD_MobileNetv1 | 1x3x300x300 | 2.30 | 3223.40 | 0.687 | 0.184 | mAP: 0.7345(FLOAT)/0.7269(INT8) | VOC |
| Centernet_resnet101 | 1x3x512x512 | 90.53 | 186.75 | 5.714 | 0.928 | [IoU=0.50:0.95]= 0.3420(FLOAT)/0.3270(INT8) | COCO |
| YOLOv3_VargDarknet | 1x3x416x416 | 42.82 | 307.08 | 3.616 | 1.575 | [IoU=0.50:0.95]= 0.3280(FLOAT)/0.3270(INT8) | COCO |
| Deeplabv3plus_efficientnetb0 | 1x3x1024x2048 | 30.77 | 152.01 | 6.968 | 0.254 | mIoU: 0.7630(FLOAT)/0.7571(INT8) | Cityscapes |
| Fastscnn_efficientnetb0 | 1x3x1024x2048 | 12.48 | 253.93 | 4.278 | 0.264 | mIoU: 0.6997(FLOAT)/0.6914(INT8) | Cityscapes |
| Deeplabv3plus_efficientnetm1 | 1x3x1024x2048 | 77.04 | 92.28 | 11.184 | 0.264 | mIoU: 0.7794(FLOAT)/0.7754(INT8) | Cityscapes |
| Deeplabv3plus_efficientnetm2 | 1x3x1024x2048 | 124.15 | 64.83 | 15.818 | 0.255 | mIoU: 0.7882(FLOAT)/0.7854(INT8) | Cityscapes |
| Bev_gkt_mixvargenet_multitask | image: 6x3x512x960 points(0-8): 6x64x64x2 | 207.16 | 68.54 | 15.425 | 4.204 | NDS: 0.2810(FLOAT)/0.2782(INT8) MeanIOU: 0.4852(FLOAT)/0.4836(INT8) mAP: 0.1990(FLOAT)/0.1997(INT8) | Nuscenes |
| Bev_ipm_4d_efficientnetb0_multitask | image: 6x3x512x960 points: 6x128x128x2 prev_feat: 1x164x28x128 prev_point: 1x128x128x2 | 53.58 | 112.15 | 9.898 | 4.163 | NDS: 0.3721(FLOAT)/0.3728(INT8) MeanIOU: 0.5287(FLOAT)/0.5388(INT8) mAP: 0.2200(FLOAT)/0.2216(INT8) | Nuscenes |
| Bev_ipm_efficientnetb0_multitask | image: 6x3x512x960 points: 6x128x128x2 | 52.97 | 115.33 | 9.443 | 4.250 | NDS: 0.3054(FLOAT)/0.3041(INT8) MeanIOU: 0.5145(FLOAT)/0.5104(INT8) mAP: 0.2170(FLOAT)/0.2163(INT8) | Nuscenes |
| Bev_lss_efficientnetb0_multitask | image: 6x3x256x704 points(0&1): 10x128x128x2 | 24.06 | 186.93 | 6.116 | 4.191 | NDS: 0.3007(FLOAT)/0.2991(INT8) MeanIOU: 0.5180(FLOAT)/0.5147(INT8) mAP: 0.2062(FLOAT)/0.2040(INT8) | Nuscenes |
| Detr3d_efficientnetb3 | coords(0-3): 6x4x256x2 image: 6x3x512x1408 masks: 1x4x256x24 | 227.71 | 32.09 | 31.709 | 1.111 | NDS: 0.3304(FLOAT)/0.3285(INT8) mAP: 0.2753(FLOAT)/0.2708(INT8) | Nuscenes |
| Petr_efficientnetb3 | image: 6x3x512x1408 pos_embed: 1x96x44x256 | 219.17 | 18.89 | 53.507 | 1.127 | NDS: 0.3765(FLOAT)/0.3731(INT8) mAP: 0.3038(FLOAT)/0.2925(INT8) | Nuscenes |
| Bevformer_tiny_resnet50_detection | img: 6x3x480x800 prev_bev: 1x2500x256 prev_bev_ref: 1x50x50x2 queries_rebatch_grid: 6x20x32x2 restore_bev_grid: 1x100x50x2 reference_points_rebatch: 6x640x4x2 bev_pillar_counts: 1x2500x1 | 387.29 | 31.29 | 41.686 | 1.200 | NDS: 0.3713(FLOAT)/0.3680(INT8) mAP: 0.2673(FLOAT)/0.2619(INT8) | Nuscenes |
| Flashocc_henet_lss_occ3d_nuscenes | img: 6x3x512x960 points: 10x128x128x2 points_depth: 10x128x128x2 | 126.75 | 96.38 | 11.232 | 40.562 | mIoU: 0.3674(FLOAT)/0.3693(INT8) | Nuscenes |
| Horizon_swin_transformer | 1x3x224x224 | 8.98 | 308.77 | 3.549 | 0.032 | Top1: 0.8024(FLOAT)/0.7959(INT8) | ImageNet |
| Mixvargenet | 1x3x224x224 | 2.07 | 4742.70 | 0.467 | 0.033 | Top1: 0.7075(FLOAT)/0.7049(INT8) | ImageNet |
| Vargnetv2 | 1x3x224x224 | 0.72 | 4423.60 | 0.520 | 0.033 | Top1: 0.7342(FLOAT)/0.7326(INT8) | ImageNet |
| Vit_small | 1x3x224x224 | 9.20 | 568.63 | 2.054 | 0.032 | Top1: 0.7950(FLOAT)/0.7937(INT8) | ImageNet |
| Centerpoint_pointpillar | points: 300000x5 voxel_feature: 1x5x20x40000 coors: 40000x4 | 127.73 | 125.15 | 15.344 | 12.889 | NDS: 0.5832(FLOAT)/0.5816(INT8) mAP: 0.4804(FLOAT)/0.4784(INT8) | Nuscenes |
| Detr_efficientnetb3 | 1x3x800x1333 | 67.39 | 51.95 | 19.619 | 0.351 | [IoU=0.50:0.95]= 0.3720(FLOAT)/0.3600(INT8) | MS COCO |
| Detr_resnet50 | 1x3x800x1333 | 203.07 | 40.20 | 25.334 | 0.345 | [IoU=0.50:0.95]= 0.3569(FLOAT)/0.3160(INT8) | MS COCO |
| FCOS3D_efficientnetb0 | 1x3x512x896 | 19.94 | 448.94 | 2.987 | 2.723 | NDS: 0.3061(FLOAT)/0.3030(INT8) mAP: 0.2133(FLOAT)/0.2069(INT8) | nuscenes |
| Fcos_efficientnetb0 | 1x3x512x512 | 5.02 | 1079.10 | 1.513 | 0.053 | [IoU=0.50:0.95]= 0.3626(FLOAT)/0.3553(INT8) | MS COCO |
| Ganet_mixvargenet | 1x3x320x800 | 10.74 | 1574.50 | 0.950 | 0.206 | F1Score: 0.7949(FLOAT)/0.7883(INT8) | CuLane |
| Keypoint_efficientnetb0 | 1x3x128x128 | 0.45 | 4533.80 | 0.500 | 0.071 | PCK(alpha=0.1): 0.9433(FLOAT)/0.9432(INT8) | Carfusion |
| Pointpillars_kitti_car | 150000x4 | 66.82 | 147.90 | 30.921 | 0.431 | APDet= 0.7731(FLOAT)/0.7678(INT8) | Kitti3d |
| Deformable_detr_resnet50 | 1x3x800x1333 | 408.94 | 5.38 | 186.460 | 15.689 | [IoU=0.50:0.95]= 0.4413(FLOAT)/0.4194(INT8) | MS COCO |
| Stereonetplus_mixvargenet | 2x3x544x960 | 48.57 | 223.90 | 4.863 | 1.874 | EPE: 1.1270(FLOAT)/1.1341(INT8) | SceneFlow |
| Centerpoint_mixvargnet_multitask | points: 300000x5 voxel_feature: 1x5x20x40000 coors: 40000x4 | 51.45 | 186.72 | 13.003 | 11.736 | NDS: 0.5809(FLOAT)/0.5753(INT8) MeanIOU: 0.9128(FLOAT)/0.9121(INT8) mAP: 0.4727(FLOAT)/0.4626(INT8) | Nuscenes |
| Unet_mobilenetv1 | 1x3x1024x2048 | 7.36 | 811.04 | 1.676 | 0.116 | mIoU: 0.6802(FLOAT)/0.6758(INT8) | Cityscapes |
| Motr_efficientnetb3 | image: 1x800x1422x3 track_query: 1x2x128x156 ref_points: 1x2x128x4 mask_query: 1x1x256x1 | 64.43 | 73.73 | 13.737 | 4.958 | MOTA: 0.5798(FLOAT)/0.5762(INT8) | Mot17 |
| Densetnt_vectornet | goals_2d: 30x1x2048x2 goals_2d_mask: 30x1x2048x1 instance_mask: 30x1x96x1 lane_feat: 30x9x64x11 traj_feat: 30x19x32x9 | 12.50 | 149.20 | 7.543 | 2.248 | minFDA: 1.2975(FLOAT)/1.3023(INT8) | Argoverse 1 |
| Maptroe_henet_tinym_bevformer | img: 6x3x480x800 osm_mask: 1x1x50x100 queries_rebatch_grid: 6x20x100x2 restore_bev_grid: 1x100x100x2 reference_points_rebatch: 6x2000x4x2 bev_pillar_counts: 1x5000x1 | 134.57 | 75.21 | 13.826 | 0.258 | mAP: 0.6633(FLOAT)/0.6565(INT8) | Nuscenes |
| Qcnet_oe | valid_mask: 1x30x10 valid_mask_a2a: 1x10x30x30 agent_type: 1x30x1 x_a_cur: 1x1x30x1,1x1x30x1,1x1x30x1,1x1x30x1 r_pl2a_cur: 1x1x30x80,1x1x30x80,1x1x30x80 r_t_cur: 1x1x30x6,1x1x30x6,1x1x30x6,1x1x30x6 r_a2a_cur: 1x1x30x30,1x1x30x30,1x1x30x30 x_a_mid_emb: 1x30x2x128 x_a: 1x30x6x128 pl_type,is_intersection: 1x80 r_pl2pl: 1x1x80x80,1x1x80x80,1x1x80x80 r_pt2pl: 1x1x80x50,1x1x80x50,1x1x80x50 mask_pl2pl: 1x80x80 magnitude,pt_type,side,mask: 1x80x50 mask_a2m: 1x30x30 mask_dst: 1x30x1 type_pl2pl: 1x80x80 | 7.85 | 234.88 | 5.384 | 0.897 | hitrate: 0.8026(FLOAT)/0.7953(INT8) | Argoverse 2 |
模型全部性能数据
MobileNetv1
- INPUT SIZE: 1x3x224x224
- C(GOPs): 1.14
- FPS: 4594.40
- ITC(ms): 0.466
- TCPP(ms): 0.033
- RV(mb): 4.56
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7374(FLOAT)/0.7295(INT8)
MobileNetv2
- INPUT SIZE: 1x3x224x224
- C(GOPs): 0.63
- FPS: 4591.90
- ITC(ms): 0.487
- TCPP(ms): 0.033
- RV(mb): 3.95
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7218(FLOAT)/0.7146(INT8)
ResNet50
- INPUT SIZE: 1x3x224x224
- C(GOPs): 7.72
- FPS: 1152.80
- ITC(ms): 1.161
- TCPP(ms): 0.033
- RV(mb): 26.08
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7704(FLOAT)/0.7673(INT8)
GoogleNet
- INPUT SIZE: 1x3x224x224
- C(GOPs): 3.00
- FPS: 2858.20
- ITC(ms): 0.636
- TCPP(ms): 0.032
- RV(mb): 7.16
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7018(FLOAT)/0.6998(INT8)
EfficientNet_Lite0
- INPUT SIZE: 1x224x224x3
- C(GOPs): 0.77
- FPS: 4068.20
- ITC(ms): 0.559
- TCPP(ms): 0.032
- RV(mb): 5.44
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7479(FLOAT)/0.7454(INT8)
EfficientNet_Lite1
- INPUT SIZE: 1x240x240x3
- C(GOPs): 1.20
- FPS: 3231.60
- ITC(ms): 0.624
- TCPP(ms): 0.032
- RV(mb): 6.34
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7652(FLOAT)/0.7614(INT8)
EfficientNet_Lite2
- INPUT SIZE: 1x260x260x3
- C(GOPs): 1.72
- FPS: 2478.80
- ITC(ms): 0.723
- TCPP(ms): 0.032
- RV(mb): 7.18
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7734(FLOAT)/0.7697(INT8)
EfficientNet_Lite3
- INPUT SIZE: 1x280x280x3
- C(GOPs): 2.77
- FPS: 1898.20
- ITC(ms): 0.841
- TCPP(ms): 0.032
- RV(mb): 9.62
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7917(FLOAT)/0.7896(INT8)
EfficientNet_Lite4
- INPUT SIZE: 1x300x300x3
- C(GOPs): 5.11
- FPS: 1300.50
- ITC(ms): 1.082
- TCPP(ms): 0.032
- RV(mb): 14.70
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.8063(FLOAT)/0.8043(INT8)
Vargconvnet
- INPUT SIZE: 1x3x224x224
- C(GOPs): 9.06
- FPS: 1464.80
- ITC(ms): 0.974
- TCPP(ms): 0.032
- RV(mb): 10.67
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7793(FLOAT)/0.7770(INT8)
Efficientnasnet_m
- INPUT SIZE: 1x3x300x300
- C(GOPs): 4.53
- FPS: 1477.10
- ITC(ms): 0.971
- TCPP(ms): 0.032
- RV(mb): 13.99
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7935(FLOAT)/0.7923(INT8)
Efficientnasnet_s
- INPUT SIZE: 1x3x280x280
- C(GOPs): 1.44
- FPS: 3327.70
- ITC(ms): 0.590
- TCPP(ms): 0.031
- RV(mb): 5.68
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7441(FLOAT)/0.7524(INT8)
ResNet18
- INPUT SIZE: 1x3x224x224
- C(GOPs): 3.63
- FPS: 2567.80
- ITC(ms): 0.671
- TCPP(ms): 0.032
- RV(mb): 11.87
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7170(FLOAT)/0.7162(INT8)
YOLOv2_Darknet19
- INPUT SIZE: 1x3x608x608
- C(GOPs): 62.94
- FPS: 227.64
- ITC(ms): 4.712
- TCPP(ms): 0.293
- RV(mb): 51.86
- WV(mb): 0.77
- Dataset: COCO
- ACCURACY: [IoU=0.50:0.95]= 0.2760(FLOAT)/0.2700(INT8)
YOLOv3_Darknet53
- INPUT SIZE: 1x3x416x416
- C(GOPs): 65.86
- FPS: 210.85
- ITC(ms): 5.101
- TCPP(ms): 1.611
- RV(mb): 68.43
- WV(mb): 9.38
- Dataset: COCO
- ACCURACY: [IoU=0.50:0.95]= 0.3370(FLOAT)/0.3360(INT8)
YOLOv5x_v2.0
- INPUT SIZE: 1x3x672x672
- C(GOPs): 243.85
- FPS: 62.44
- ITC(ms): 16.437
- TCPP(ms): 5.683
- RV(mb): 140.18
- WV(mb): 50.31
- Dataset: COCO
- ACCURACY: [IoU=0.50:0.95]= 0.4810(FLOAT)/0.4670(INT8)
SSD_MobileNetv1
- INPUT SIZE: 1x3x300x300
- C(GOPs): 2.30
- FPS: 3223.40
- ITC(ms): 0.687
- TCPP(ms): 0.184
- RV(mb): 6.24
- WV(mb): 0.21
- Dataset: VOC
- ACCURACY: mAP: 0.7345(FLOAT)/0.7269(INT8)
Centernet_resnet101
- INPUT SIZE: 1x3x512x512
- C(GOPs): 90.53
- FPS: 186.75
- ITC(ms): 5.714
- TCPP(ms): 0.928
- RV(mb): 59.17
- WV(mb): 11.80
- Dataset: COCO
- ACCURACY: [IoU=0.50:0.95]= 0.3420(FLOAT)/0.3270(INT8)
YOLOv3_VargDarknet
- INPUT SIZE: 1x3x416x416
- C(GOPs): 42.82
- FPS: 307.08
- ITC(ms): 3.616
- TCPP(ms): 1.575
- RV(mb): 46.52
- WV(mb): 4.91
- Dataset: COCO
- ACCURACY: [IoU=0.50:0.95]= 0.3280(FLOAT)/0.3270(INT8)
Deeplabv3plus_efficientnetb0
- INPUT SIZE: 1x3x1024x2048
- C(GOPs): 30.77
- FPS: 152.01
- ITC(ms): 6.968
- TCPP(ms): 0.254
- RV(mb): 22.09
- WV(mb): 11.80
- Dataset: Cityscapes
- ACCURACY: mIoU: 0.7630(FLOAT)/0.7571(INT8)
Fastscnn_efficientnetb0
- INPUT SIZE: 1x3x1024x2048
- C(GOPs): 12.48
- FPS: 253.93
- ITC(ms): 4.278
- TCPP(ms): 0.264
- RV(mb): 11.58
- WV(mb): 9.24
- Dataset: Cityscapes
- ACCURACY: mIoU: 0.6997(FLOAT)/0.6914(INT8)
Deeplabv3plus_efficientnetm1
- INPUT SIZE: 1x3x1024x2048
- C(GOPs): 77.04
- FPS: 92.28
- ITC(ms): 11.184
- TCPP(ms): 0.264
- RV(mb): 86.77
- WV(mb): 55.57
- Dataset: Cityscapes
- ACCURACY: mIoU: 0.7794(FLOAT)/0.7754(INT8)
Deeplabv3plus_efficientnetm2
- INPUT SIZE: 1x3x1024x2048
- C(GOPs): 124.15
- FPS: 64.83
- ITC(ms): 15.818
- TCPP(ms): 0.255
- RV(mb): 155.15
- WV(mb): 89.13
- Dataset: Cityscapes
- ACCURACY: mIoU: 0.7882(FLOAT)/0.7854(INT8)
Bev_gkt_mixvargenet_multitask
- INPUT SIZE: image: 6x3x512x960 points(0-8): 6x64x64x2
- C(GOPs): 207.16
- FPS: 68.54
- ITC(ms): 15.425
- TCPP(ms): 4.204
- RV(mb): 121.70
- WV(mb): 97.64
- Dataset: Nuscenes
- ACCURACY: NDS: 0.2810(FLOAT)/0.2782(INT8) MeanIOU: 0.4852(FLOAT)/0.4836(INT8) mAP: 0.1990(FLOAT)/0.1997(INT8)
Bev_ipm_4d_efficientnetb0_multitask
- INPUT SIZE: image: 6x3x512x960 points: 6x128x128x2 prev_feat: 1x164x28x128 prev_point: 1x128x128x2
- C(GOPs): 53.58
- FPS: 112.15
- ITC(ms): 9.898
- TCPP(ms): 4.163
- RV(mb): 65.63
- WV(mb): 51.93
- Dataset: Nuscenes
- ACCURACY: NDS: 0.3721(FLOAT)/0.3728(INT8) MeanIOU: 0.5287(FLOAT)/0.5388(INT8) mAP: 0.2200(FLOAT)/0.2216(INT8)
Bev_ipm_efficientnetb0_multitask
- INPUT SIZE: image: 6x3x512x960 points: 6x128x128x2
- C(GOPs): 52.97
- FPS: 115.33
- ITC(ms): 9.443
- TCPP(ms): 4.250
- RV(mb): 62.33
- WV(mb): 49.84
- Dataset: Nuscenes
- ACCURACY: NDS: 0.3054(FLOAT)/0.3041(INT8) MeanIOU: 0.5145(FLOAT)/0.5104(INT8) mAP: 0.2170(FLOAT)/0.2163(INT8)
Bev_lss_efficientnetb0_multitask
- INPUT SIZE: image: 6x3x256x704 points(0&1): 10x128x128x2
- C(GOPs): 24.06
- FPS: 186.93
- ITC(ms): 6.116
- TCPP(ms): 4.191
- RV(mb): 25.42
- WV(mb): 19.02
- Dataset: Nuscenes
- ACCURACY: NDS: 0.3007(FLOAT)/0.2991(INT8) MeanIOU: 0.5180(FLOAT)/0.5147(INT8) mAP: 0.2062(FLOAT)/0.2040(INT8)
Detr3d_efficientnetb3
- INPUT SIZE: coords(0-3): 6x4x256x2 image: 6x3x512x1408 masks: 1x4x256x24
- C(GOPs): 227.71
- FPS: 32.09
- ITC(ms): 31.709
- TCPP(ms): 1.111
- RV(mb): 330.69
- WV(mb): 176.11
- Dataset: Nuscenes
- ACCURACY: NDS: 0.3304(FLOAT)/0.3285(INT8) mAP: 0.2753(FLOAT)/0.2708(INT8)
Petr_efficientnetb3
- INPUT SIZE: image: 6x3x512x1408 pos_embed: 1x96x44x256
- C(GOPs): 219.17
- FPS: 18.89
- ITC(ms): 53.507
- TCPP(ms): 1.127
- RV(mb): 298.77
- WV(mb): 184.89
- Dataset: Nuscenes
- ACCURACY: NDS: 0.3765(FLOAT)/0.3731(INT8) mAP: 0.3038(FLOAT)/0.2925(INT8)
Bevformer_tiny_resnet50_detection
- INPUT SIZE: img: 6x3x480x800 prev_bev: 1x2500x256 prev_bev_ref: 1x50x50x2 queries_rebatch_grid: 6x20x32x2 restore_bev_grid: 1x100x50x2 reference_points_rebatch: 6x640x4x2 bev_pillar_counts: 1x2500x1
- C(GOPs): 387.29
- FPS: 31.29
- ITC(ms): 41.686
- TCPP(ms): 1.200
- RV(mb): 266.60
- WV(mb): 176.56
- Dataset: Nuscenes
- ACCURACY: NDS: 0.3713(FLOAT)/0.3680(INT8) mAP: 0.2673(FLOAT)/0.2619(INT8)
Flashocc_henet_lss_occ3d_nuscenes
- INPUT SIZE: img: 6x3x512x960 points: 10x128x128x2 points_depth: 10x128x128x2
- C(GOPs): 126.75
- FPS: 96.38
- ITC(ms): 11.232
- TCPP(ms): 40.562
- RV(mb): 87.45
- WV(mb): 55.84
- Dataset: Nuscenes
- ACCURACY: mIoU: 0.3674(FLOAT)/0.3693(INT8)
Horizon_swin_transformer
- INPUT SIZE: 1x3x224x224
- C(GOPs): 8.98
- FPS: 308.77
- ITC(ms): 3.549
- TCPP(ms): 0.032
- RV(mb): 46.54
- WV(mb): 7.51
- Dataset: ImageNet
- ACCURACY: Top1: 0.8024(FLOAT)/0.7959(INT8)
Mixvargenet
- INPUT SIZE: 1x3x224x224
- C(GOPs): 2.07
- FPS: 4742.70
- ITC(ms): 0.467
- TCPP(ms): 0.033
- RV(mb): 2.51
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7075(FLOAT)/0.7049(INT8)
Vargnetv2
- INPUT SIZE: 1x3x224x224
- C(GOPs): 0.72
- FPS: 4423.60
- ITC(ms): 0.520
- TCPP(ms): 0.033
- RV(mb): 4.68
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7342(FLOAT)/0.7326(INT8)
Vit_small
- INPUT SIZE: 1x3x224x224
- C(GOPs): 9.20
- FPS: 568.63
- ITC(ms): 2.054
- TCPP(ms): 0.032
- RV(mb): 26.15
- WV(mb): 0.0041
- Dataset: ImageNet
- ACCURACY: Top1: 0.7950(FLOAT)/0.7937(INT8)
Centerpoint_pointpillar
- INPUT SIZE: points: 300000x5 voxel_feature: 1x5x20x40000 coors: 40000x4
- C(GOPs): 127.73
- FPS: 125.15
- ITC(ms): 15.344
- TCPP(ms): 12.889
- RV(mb): 51.36
- WV(mb): 25.83
- Dataset: Nuscenes
- ACCURACY: NDS: 0.5832(FLOAT)/0.5816(INT8) mAP: 0.4804(FLOAT)/0.4784(INT8)
Detr_efficientnetb3
- INPUT SIZE: 1x3x800x1333
- C(GOPs): 67.39
- FPS: 51.95
- ITC(ms): 19.619
- TCPP(ms): 0.351
- RV(mb): 261.38
- WV(mb): 137.07
- Dataset: MS COCO
- ACCURACY: [IoU=0.50:0.95]= 0.3720(FLOAT)/0.3600(INT8)
Detr_resnet50
- INPUT SIZE: 1x3x800x1333
- C(GOPs): 203.07
- FPS: 40.20
- ITC(ms): 25.334
- TCPP(ms): 0.345
- RV(mb): 352.78
- WV(mb): 224.48
- Dataset: MS COCO
- ACCURACY: [IoU=0.50:0.95]= 0.3569(FLOAT)/0.3160(INT8)
FCOS3D_efficientnetb0
- INPUT SIZE: 1x3x512x896
- C(GOPs): 19.94
- FPS: 448.94
- ITC(ms): 2.987
- TCPP(ms): 2.723
- RV(mb): 11.23
- WV(mb): 4.17
- Dataset: nuscenes
- ACCURACY: NDS: 0.3061(FLOAT)/0.3030(INT8) mAP: 0.2133(FLOAT)/0.2069(INT8)
Fcos_efficientnetb0
- INPUT SIZE: 1x3x512x512
- C(GOPs): 5.02
- FPS: 1079.10
- ITC(ms): 1.513
- TCPP(ms): 0.053
- RV(mb): 6.09
- WV(mb): 2.68
- Dataset: MS COCO
- ACCURACY: [IoU=0.50:0.95]= 0.3626(FLOAT)/0.3553(INT8)
Ganet_mixvargenet
- INPUT SIZE: 1x3x320x800
- C(GOPs): 10.74
- FPS: 1574.50
- ITC(ms): 0.950
- TCPP(ms): 0.206
- RV(mb): 2.16
- WV(mb): 0.52
- Dataset: CuLane
- ACCURACY: F1Score: 0.7949(FLOAT)/0.7883(INT8)
Keypoint_efficientnetb0
- INPUT SIZE: 1x3x128x128
- C(GOPs): 0.45
- FPS: 4533.80
- ITC(ms): 0.500
- TCPP(ms): 0.071
- RV(mb): 4.62
- WV(mb): 0.01
- Dataset: Carfusion
- ACCURACY: PCK(alpha=0.1): 0.9433(FLOAT)/0.9432(INT8)
Pointpillars_kitti_car
- INPUT SIZE: 150000x4
- C(GOPs): 66.82
- FPS: 147.90
- ITC(ms): 30.921
- TCPP(ms): 0.431
- RV(mb): 69.93
- WV(mb): 30.00
- Dataset: Kitti3d
- ACCURACY: APDet= 0.7731(FLOAT)/0.7678(INT8)
Deformable_detr_resnet50
- INPUT SIZE: 1x3x800x1333
- C(GOPs): 408.94
- FPS: 5.38
- ITC(ms): 186.460
- TCPP(ms): 15.689
- RV(mb): 3476.02
- WV(mb): 2497.51
- Dataset: MS COCO
- ACCURACY: [IoU=0.50:0.95]= 0.4413(FLOAT)/0.4194(INT8)
Stereonetplus_mixvargenet
- INPUT SIZE: 2x3x544x960
- C(GOPs): 48.57
- FPS: 223.90
- ITC(ms): 4.863
- TCPP(ms): 1.874
- RV(mb): 30.64
- WV(mb): 28.07
- Dataset: SceneFlow
- ACCURACY: EPE: 1.1270(FLOAT)/1.1341(INT8)
Centerpoint_mixvargnet_multitask
- INPUT SIZE: points: 300000x5 voxel_feature: 1x5x20x40000 coors: 40000x4
- C(GOPs): 51.45
- FPS: 186.72
- ITC(ms): 13.003
- TCPP(ms): 11.736
- RV(mb): 32.08
- WV(mb): 16.79
- Dataset: Nuscenes
- ACCURACY: NDS: 0.5809(FLOAT)/0.5753(INT8) MeanIOU: 0.9128(FLOAT)/0.9121(INT8) mAP: 0.4727(FLOAT)/0.4626(INT8)
Unet_mobilenetv1
- INPUT SIZE: 1x3x1024x2048
- C(GOPs): 7.36
- FPS: 811.04
- ITC(ms): 1.676
- TCPP(ms): 0.116
- RV(mb): 13.27
- WV(mb): 7.60
- Dataset: Cityscapes
- ACCURACY: mIoU: 0.6802(FLOAT)/0.6758(INT8)
Motr_efficientnetb3
- INPUT SIZE: image: 1x800x1422x3 track_query: 1x2x128x156 ref_points: 1x2x128x4 mask_query: 1x1x256x1
- C(GOPs): 64.43
- FPS: 73.73
- ITC(ms): 13.737
- TCPP(ms): 4.958
- RV(mb): 115.40
- WV(mb): 47.22
- Dataset: Mot17
- ACCURACY: MOTA: 0.5798(FLOAT)/0.5762(INT8)
Densetnt_vectornet
- INPUT SIZE: goals_2d: 30x1x2048x2 goals_2d_mask: 30x1x2048x1 instance_mask: 30x1x96x1 lane_feat: 30x9x64x11 traj_feat: 30x19x32x9
- C(GOPs): 12.50
- FPS: 149.20
- ITC(ms): 7.543
- TCPP(ms): 2.248
- RV(mb): 56.79
- WV(mb): 34.86
- Dataset: Argoverse 1
- ACCURACY: minFDA: 1.2975(FLOAT)/1.3023(INT8)
Maptroe_henet_tinym_bevformer
- INPUT SIZE: img: 6x3x480x800 osm_mask: 1x1x50x100 queries_rebatch_grid: 6x20x100x2 restore_bev_grid: 1x100x100x2 reference_points_rebatch: 6x2000x4x2 bev_pillar_counts: 1x5000x1
- C(GOPs): 134.57
- FPS: 75.21
- ITC(ms): 13.826
- TCPP(ms): 0.258
- RV(mb): 119.91
- WV(mb): 35.37
- Dataset: Nuscenes
- ACCURACY: mAP: 0.6633(FLOAT)/0.6565(INT8)
Qcnet_oe
- INPUT SIZE: valid_mask: 1x30x10 valid_mask_a2a: 1x10x30x30 agent_type: 1x30x1 x_a_cur: 1x1x30x1,1x1x30x1,1x1x30x1,1x1x30x1 r_pl2a_cur: 1x1x30x80,1x1x30x80,1x1x30x80 r_t_cur: 1x1x30x6,1x1x30x6,1x1x30x6,1x1x30x6 r_a2a_cur: 1x1x30x30,1x1x30x30,1x1x30x30 x_a_mid_emb: 1x30x2x128 x_a: 1x30x6x128 pl_type,is_intersection: 1x80 r_pl2pl: 1x1x80x80,1x1x80x80,1x1x80x80 r_pt2pl: 1x1x80x50,1x1x80x50,1x1x80x50 mask_pl2pl: 1x80x80 magnitude,pt_type,side,mask: 1x80x50 mask_a2m: 1x30x30 mask_dst: 1x30x1 type_pl2pl: 1x80x80
- C(GOPs): 7.85
- FPS: 234.88
- ITC(ms): 5.384
- TCPP(ms): 0.897
- RV(mb): 36.03
- WV(mb): 17.51
- Dataset: Argoverse 2
- ACCURACY: hitrate: 0.8026(FLOAT)/0.7953(INT8)
