This is the implementation of "CSPNet: A New Backbone that can Enhance Learning Capability of CNN" using Darknet framwork.
For installing Darknet framework, you can refer to darknet(AlexeyAB).
Combining with CIoU, Scale Sensitivity, IoU Threshold, Greedy NMS, Mosaic Augmentation, ...
CSPResNeXt-50-PANet-SPP acheives impressive results on test-dev set of MSCOCO object detection task:
Model | Size | fps | AP | AP50 | AP75 | APS | APM | APL | cfg | weight |
---|---|---|---|---|---|---|---|---|---|---|
CSPResNeXt50-PANet-SPP(SAM) | 512×512 | - | 42.7 | 64.6 | 46.3 | 23.7 | 46.1 | 55.3 | - | - |
CSPResNeXt50-PANet-SPP(SAM) | 608×608 | - | 43.2 | 65.4 | 47.1 | 26.1 | 46.7 | 53.2 | - | - |
CSPResNeXt50-PANet-SPP(GIoU) | 512×512 | - | 42.4 | 64.4 | 45.9 | 23.3 | 45.9 | 55.0 | - | - |
CSPResNeXt50-PANet-SPP(GIoU) | 608×608 | - | 43.1 | 65.4 | 47.0 | 26.0 | 46.9 | 52.8 | - | - |
CSPResNeXt50-PANet-SPP | 512×512 | 44(1080ti) 67(GV100) | 42.4 | 64.4 | 45.9 | 23.2 | 45.5 | 55.3 | cfg | weight |
CSPResNeXt50-PANet-SPP | 608×608 | 35(1080ti) 44(GV100) | 43.2 | 65.4 | 47.0 | 25.7 | 46.7 | 53.3 | cfg | weight |
CSPDarknet53-PANet-SPP | 512×512 | 51(1080ti) | 42.4 | 64.5 | 46.0 | 23.9 | 45.6 | 54.2 | cfg | weight |
Model | #Parameter | BFLOPs | Top-1 | Top-5 | cfg | weight |
---|---|---|---|---|---|---|
DarkNet-53 [1] | 41.57M | 18.57 | 77.2 | 93.8 | cfg | weight |
CSPDarkNet-53 | 27.61M (-34%) | 13.07 (-30%) | 77.2 (=) | 93.6 (-0.2) | cfg | weight |
CSPDarkNet-53-Elastic | - | 7.74 (-58%) | 76.1 (-1.1) | 93.3 (-0.5) | cfg | weight |
ResNet-50 [2] | 22.73M | 9.74 | 75.8 | 92.9 | cfg | weight |
CSPResNet-50 | 21.57M (-5%) | 8.97 (-8%) | 76.6 (+0.8) | 93.3 (+0.4) | cfg | weight |
CSPResNet-50-Elastic | - | 9.36 (-4%) | 76.8 (+1.0) | 93.5 (+0.6) | cfg | weight |
ResNeXt-50 [3] | 22.19M | 10.11 | 77.8 | 94.2 | cfg | weight |
CSPResNeXt-50 | 20.50M (-8%) | 7.93 (-22%) | 77.9 (+0.1) | 94.0 (-0.2) | cfg | weight |
CSPResNeXt-50-Elastic | - | 5.45 (-46%) | 77.2 (-0.6) | 93.8 (-0.4) | cfg | weight |
CSPResNeXt-50+Elastic | - | 7.82 (-23%) | 78.2 (+0.4) | 94.2 (=) | - | - |
HarDNet-138s [4] | 35.5M | 13.4 | 77.8 | - | - | - |
DenseNet-264-32 [5] | 27.21M | 11.03 | 77.8 | 93.9 | - | - |
ResNet-152 [2] | 60.2M | 22.6 | 77.8 | 93.6 | - | - |
DenseNet-201+Elastic [6] | 19.48M | 8.77 | 77.9 | 94.0 | - | - |
CSPDenseNet-201+Elastic | 20.17M (+4%) | 7.13 (-19%) | 77.9 (=) | 94.0 (=) | - | - |
Res2NetLite-72 [7] | - | 5.19 | 74.7 | 92.1 | cfg | weight |
Model | #Parameter | BFLOPs | Top-1 | Top-5 | cfg | weight |
---|---|---|---|---|---|---|
PeleeNet [8] | 2.79M | 1.017 | 70.7 | 90.0 | - | - |
PeleeNet-swish | 2.79M | 1.017 | 71.5 | 90.7 | - | - |
PeleeNet-swish-SE | 2.81M | 1.017 | 72.1 | 91.0 | - | - |
CSPPeleeNet | 2.83M (+1%) | 0.888 (-13%) | 70.9 (+0.2) | 90.2 (+0.2) | - | - |
CSPPeleeNet-swish | 2.83M (+1%) | 0.888 (-13%) | 71.7 (+0.2) | 90.8 (+0.1) | - | - |
CSPPeleeNet-swish-SE | 2.85M (+1%) | 0.888 (-13%) | 72.4 (+0.3) | 91.0 (=) | - | - |
SparsePeleeNet [9] | 2.39M | 0.904 | 69.6 | 89.3 | - | - |
EfficientNet-B0* [10] | 4.81M | 0.915 | 71.3 | 90.4 | cfg | weight |
EfficientNet-B0 (official) [10] | - | - | 70.0 | 88.9 | - | - |
MobileNet-v2 [11] | 3.47M | 0.858 | 67.0 | 87.7 | cfg | weight |
CSPMobileNet-v2 | 2.51M (-28%) | 0.764 (-11%) | 67.7 (+0.7) | 88.3 (+0.6) | cfg | weight |
Darknet Ref. [12] | 7.31M | 0.96 | 61.1 | 83.0 | cfg | weight |
CSPDenseNet Ref. | 3.48M (-52%) | 0.886 (-8%) | 65.7 (+4.6) | 86.6 (+3.6) | - | - |
CSPPeleeNet Ref. | 4.10M (-44%) | 1.103 (+15%) | 68.9 (+7.8) | 88.7 (+5.7) | - | - |
CSPDenseNetb Ref. | 1.38M (-81%) | 0.631 (-34%) | 64.2 (+3.1) | 85.5 (+2.5) | - | - |
CSPPeleeNetb Ref. | 2.01M (-73%) | 0.897 (-7%) | 67.8 (+6.7) | 88.1 (+5.1) | - | - |
ResNet-10 [2] | 5.24M | 2.273 | 63.5 | 85.0 | cfg | weight |
CSPResNet-10 | 2.73M (-48%) | 1.905 (-16%) | 65.3 (+1.8) | 86.5 (+1.5) | - | - |
MixNet-M-GPU | - | 1.065 | 71.5 | 90.5 | - | - |
※EfficientNet* is implemented by Darknet framework.
※EfficientNet(official) is trained by official code with batch size equals to 256.
※Swish activation function is presented by [13].
※Squeeze-and-excitation (SE) network is presented by [14].
※MixNet-M-GPU is modified from MixNet-M [21]
- Activation function
Model | Activation | Top-1 | Top-5 |
---|---|---|---|
PeleeNet | LReLU | 70.7 | 90.0 |
PeleeNet | Swish | 71.5 (+0.8) | 90.7 (+0.7) |
PeleeNet | Mish | 71.4 (+0.7) | 90.4 (+0.4) |
CSPPeleeNet | LReLU | 70.9 | 90.2 |
CSPPeleeNet | Swish | 71.7 (+0.8) | 90.8 (+0.6) |
CSPPeleeNet | Mish | 71.2 (+0.3) | 90.3 (+0.1) |
CSPResNeXt-50 | LReLU | 77.9 | 94.0 |
CSPResNeXt-50 | Mish | 78.9 (+1.0) | 94.5 (+0.5) |
※Swish activation function is not suitable for ResNeXt-based models, details are shown in Mish paper [22].
- Data augmentation
Model | Augmentation | Top-1 | Top-5 |
---|---|---|---|
CSPResNeXt-50 | Normal | 77.9 | 94.0 |
CSPResNeXt-50 | Mixup | 77.2 | 94.0 |
CSPResNeXt-50 | Cutmix | 78.0 | 94.3 |
CSPResNeXt-50 | Cutmix+Mixup | 77.7 | 94.4 |
CSPResNeXt-50 | Mosaic | 78.1 | 94.5 |
CSPResNeXt-50 | Blur | 77.5 | 93.8 |
※Mixup is presented by [23] and used by [24].
※CutMix is presented by [25].
※Have to check the implementation of mixup and cutmix.
- Other
Model | Method | Top-1 | Top-5 |
---|---|---|---|
CSPResNeXt-50 | Normal | 77.9 | 94.0 |
CSPResNeXt-50 | Smooth | 78.1 | 94.4 |
※Smooth means label smoothing, which is presented by [26].
Model | Size | 1080ti fps | AP | AP50 | AP75 | cfg | weight |
---|---|---|---|---|---|---|---|
CSPResNeXt50-PANet-SPP | 512×512 | 44 | 38.0 | 60.0 | 40.8 | cfg | weight |
CSPDarknet53-PANet-SPP | 512×512 | 51 | 38.7 | 61.3 | 41.7 | cfg | weight |
CSPResNet50-PANet-SPP | 512×512 | 55 | 38.0 | 60.5 | 40.7 | cfg | weight |
※PANet is presented by [15].
※SPP is presented by [16].
Model | Size | 9900K fps | AP | AP50 | AP75 | cfg | weight |
---|---|---|---|---|---|---|---|
YOLOv3-tiny [1] | 416×416 | 54 | - | 33.1 | - | cfg | weight |
YOLOv3-tiny-PRN [18] | 416×416 | 71 | - | 33.1 | - | cfg | weight |
SNet49-ThunderNet* [19] | 320×320 | 47 | 19.1 | 33.7 | 19.6 | - | - |
Ours | 320×320 | 102 | 15.3 | 34.2 | 12.0 | - | - |
SNet146-ThunderNet* [19] | 320×320 | 32 | 23.6 | 40.2 | 24.5 | - | - |
Ours | 320×320 | 52 | 19.4 | 40.0 | 17.0 | - | - |
Pelee** [7] | 304×304 | 7 | 22.4 | 38.3 | 22.9 | - | - |
RefineDetLite** [20] | 320×320 | 8 | 26.8 | 46.6 | 27.4 | - | - |
※SNet49-ThunderNet* and SNet146-ThunderNet* are test on Xeon E5-2682v4.
※Pelee** and RefineDetLite** are test on i7-6700.
- NMS threshold
Model | Size | Threshold | AP | AP50 | AP75 | APS | APM | APL |
---|---|---|---|---|---|---|---|---|
CSPResNeXt50-PANet-SPP | 512×512 | 0.45 | 38.0 | 60.0 | 40.8 | 19.7 | 41.4 | 49.9 |
CSPResNeXt50-PANet-SPP | 512×512 | 0.50 | 38.2 | 60.2 | 41.1 | 19.8 | 41.6 | 50.1 |
CSPResNeXt50-PANet-SPP | 512×512 | 0.55 | 38.4 | 60.1 | 41.3 | 20.0 | 41.7 | 50.3 |
CSPResNeXt50-PANet-SPP | 512×512 | 0.60 | 38.5 | 60.0 | 41.7 | 20.1 | 41.9 | 50.4 |
CSPResNeXt50-PANet-SPP | 512×512 | 0.65 | 38.6 | 59.7 | 42.1 | 20.1 | 41.9 | 50.4 |
CSPResNeXt50-PANet-SPP | 512×512 | 0.70 | 38.5 | 59.2 | 42.4 | 20.1 | 41.9 | 50.4 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | 0.45 | 39.4 | 59.4 | 42.5 | 20.4 | 42.6 | 51.4 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | 0.50 | 39.7 | 59.5 | 42.7 | 20.5 | 42.5 | 51.7 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | 0.55 | 39.8 | 59.5 | 43.0 | 20.7 | 43.1 | 51.9 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | 0.60 | 40.0 | 59.3 | 43.4 | 20.8 | 43.2 | 52.0 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | 0.65 | 40.1 | 59.0 | 43.8 | 20.9 | 43.4 | 52.1 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | 0.70 | 40.1 | 58.6 | 44.2 | 20.9 | 43.4 | 52.1 |
CSPResNeXt50-PANet-SPP-GIoU | 512×512 | aware | 40.0 | 59.5 | 43.4 | 20.8 | 43.2 | 52.0 |
※GIoU is presented by [17].
- Activation function
Model | Size | Activation | AP | AP50 | AP75 | APS | APM | APL |
---|---|---|---|---|---|---|---|---|
CSPPeleeNet-PRN | 416×416 | Leaky ReLU | 23.1 | 44.5 | 22.0 | 6.6 | 24.4 | 35.3 |
CSPPeleeNet-PRN | 416×416 | Swish | 24.1 | 45.8 | 23.3 | 6.8 | 26.1 | 35.5 |
- Loss function
Model | Size | Loss | AP | AP50 | AP75 | APS | APM | APL |
---|---|---|---|---|---|---|---|---|
CSPResNeXt50-PANet-SPP | 512×512 | MSE | 38.0 | 60.0 | 40.8 | 19.7 | 41.4 | 49.9 |
CSPResNeXt50-PANet-SPP | 512×512 | GIoU | 39.4 | 59.4 | 42.5 | 20.4 | 42.6 | 51.4 |
CSPResNeXt50-PANet-SPP | 512×512 | DIoU | 39.1 | 58.8 | 42.1 | 20.1 | 42.4 | 50.7 |
CSPResNeXt50-PANet-SPP | 512×512 | CIoU | 39.6 | 59.2 | 42.6 | 20.5 | 42.9 | 51.6 |
※DIoU and CIoU are presented by [27].
@inproceedings{wang2020cspnet,
title={CSPNet: A new backbone that can enhance learning capability of cnn},
author={Wang, Chien-Yao and Mark Liao, Hong-Yuan and Wu, Yueh-Hua and Chen, Ping-Yang and Hsieh, Jun-Wei and Yeh, I-Hau},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops},
pages={390--391},
year={2020}
}
[1] YOLOv3: An Incremental Improvement
[2] Deep Residual Learning for Image Recognition (CVPR 2016)
[3] Aggregated Residual Transformations for Deep Neural Networks (CVPR 2017)
[4] HarDNet: A Low Memory Traffic Network (ICCV 2019)
[5] Densely Connected Convolutional Networks (CVPR 2017)
[6] ELASTIC: Improving CNNs with Dynamic Scaling Policies (CVPR 2019)
[7] RefineDetLite: A Lightweight One-stage Object Detection Framework for CPU-only Devices
[8] Pelee: A Real-Time Object Detection System on Mobile Devices (NeurIPS 2018)
[9] Sparsely Aggregated Convolutional Networks (ECCV 2018)
[10] EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks (ICML 2019)
[11] MobileNetV2: Inverted Residuals and Linear Bottlenecks (CVPR 2018)
[12] https://pjreddie.com/darknet/tiny-darknet/
[13] Searching for Activation Functions
[14] Squeeze-and-Excitation Networks (CVPR 2018)
[15] Path Aggregation Network for Instance Segmentation (CVPR 2018)
[16] Spatial Pyramid Pooling in Deep Convolutional Networks for Visual Recognition (TPAMI 2015)
[17] Generalized Intersection over Union: A Metric and A Loss for Bounding Box Regression (CVPR 2019)
[18] Enriching Variety of Layer-wise Learning Information by Gradient Combination (ICCVW 2019)
[19] ThunderNet: Towards Real-time Generic Object Detection (ICCV 2019)
[20] RefineDetLite: A Lightweight One-stage Object Detection Framework for CPU-only Devices
[21] MixConv: Mixed Depthwise Convolutional Kernels
[22] Mish: A Self Regularized Non-Monotonic Neural Activation Function
[23] mixup: Beyond Empirical Risk Minimization (ICLR 2018)
[24] Bag of Freebies for Training Object Detection Neural Networks
[25] CutMix: Regularization Strategy to Train Strong Classifiers with Localizable Features (ICCV 2019)
[26] Rethinking the Inception Architecture for Computer Vision (CVPR 2016)
[27] Distance-IoU Loss: Faster and Better Learning for Bounding Box Regression (AAAI 2020)