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| README.md | 5 years ago | |
| README_CN.md | 5 years ago | |
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| export.py | 5 years ago | |
| mindspore_hub_conf.py | 5 years ago | |
| train.py | 5 years ago | |
Before FasterRcnn, the target detection networks rely on the region proposal algorithm to assume the location of targets, such as SPPnet and Fast R-CNN. Progress has reduced the running time of these detection networks, but it also reveals that the calculation of the region proposal is a bottleneck.
FasterRcnn proposed that convolution feature maps based on region detectors (such as Fast R-CNN) can also be used to generate region proposals. At the top of these convolution features, a Region Proposal Network (RPN) is constructed by adding some additional convolution layers (which share the convolution characteristics of the entire image with the detection network, thus making it possible to make regions almost costlessProposal), outputting both region bounds and objectness score for each location.Therefore, RPN is a full convolutional network (FCN), which can be trained end-to-end, generate high-quality region proposals, and then fed into Fast R-CNN for detection.
Paper: Ren S , He K , Girshick R , et al. Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2015, 39(6).
FasterRcnn is a two-stage target detection network,This network uses a region proposal network (RPN), which can share the convolution features of the whole image with the detection network, so that the calculation of region proposal is almost cost free. The whole network further combines RPN and FastRcnn into a network by sharing the convolution features.
Note that you can run the scripts based on the dataset mentioned in original paper or widely used in relevant domain/network architecture. In the following sections, we will introduce how to run the scripts using the related dataset below.
Dataset used: COCO2017
Install MindSpore.
Download the dataset COCO2017.
We use COCO2017 as training dataset in this example by default, and you can also use your own datasets.
If coco dataset is used. Select dataset to coco when run script.
Install Cython and pycocotool, and you can also install mmcv to process data.
pip install Cython
pip install pycocotools
pip install mmcv==0.2.14
And change the COCO_ROOT and other settings you need in config.py. The directory structure is as follows:
.
└─cocodataset
├─annotations
├─instance_train2017.json
└─instance_val2017.json
├─val2017
└─train2017
If your own dataset is used. Select dataset to other when run script.
Organize the dataset infomation into a TXT file, each row in the file is as follows:
train2017/0000001.jpg 0,259,401,459,7 35,28,324,201,2 0,30,59,80,2
Each row is an image annotation which split by space, the first column is a relative path of image, the others are box and class infomations of the format [xmin,ymin,xmax,ymax,class]. We read image from an image path joined by the IMAGE_DIR(dataset directory) and the relative path in ANNO_PATH(the TXT file path), IMAGE_DIR and ANNO_PATH are setting in config.py.
After installing MindSpore via the official website, you can start training and evaluation as follows:
Note: 1.the first run will generate the mindeocrd file, which will take a long time.
2.pretrained model is a resnet50 checkpoint that trained over ImageNet2012.
3.VALIDATION_JSON_FILE is label file. CHECKPOINT_PATH is a checkpoint file after trained.
# standalone training
sh run_standalone_train_ascend.sh [PRETRAINED_MODEL]
# distributed training
sh run_distribute_train_ascend.sh [RANK_TABLE_FILE] [PRETRAINED_MODEL]
# eval
sh run_eval_ascend.sh [VALIDATION_JSON_FILE] [CHECKPOINT_PATH]
.
└─faster_rcnn
├─README.md // descriptions about fasterrcnn
├─scripts
├─run_standalone_train_ascend.sh // shell script for standalone on ascend
├─run_distribute_train_ascend.sh // shell script for distributed on ascend
└─run_eval_ascend.sh // shell script for eval on ascend
├─src
├─FasterRcnn
├─__init__.py // init file
├─anchor_generator.py // anchor generator
├─bbox_assign_sample.py // first stage sampler
├─bbox_assign_sample_stage2.py // second stage sampler
├─faster_rcnn_r50.py // fasterrcnn network
├─fpn_neck.py //feature pyramid network
├─proposal_generator.py // proposal generator
├─rcnn.py // rcnn network
├─resnet50.py // backbone network
├─roi_align.py // roi align network
└─rpn.py // region proposal network
├─config.py // total config
├─dataset.py // create dataset and process dataset
├─lr_schedule.py // learning ratio generator
├─network_define.py // network define for fasterrcnn
└─util.py // routine operation
├─eval.py //eval scripts
└─train.py // train scripts
# standalone training on ascend
sh run_standalone_train_ascend.sh [PRETRAINED_MODEL]
# distributed training on ascend
sh run_distribute_train_ascend.sh [RANK_TABLE_FILE] [PRETRAINED_MODEL]
Rank_table.json which is specified by RANK_TABLE_FILE is needed when you are running a distribute task. You can generate it by using the hccl_tools.
As for PRETRAINED_MODEL,it should be a ResNet50 checkpoint that trained over ImageNet2012. Ready-made pretrained_models are not available now. Stay tuned.
The original dataset path needs to be in the config.py,you can select "coco_root" or "image_dir".
Training result will be stored in the example path, whose folder name begins with "train" or "train_parallel". You can find checkpoint file together with result like the followings in loss_rankid.log.
# distribute training result(8p)
epoch: 1 step: 7393, rpn_loss: 0.12054, rcnn_loss: 0.40601, rpn_cls_loss: 0.04025, rpn_reg_loss: 0.08032, rcnn_cls_loss: 0.25854, rcnn_reg_loss: 0.14746, total_loss: 0.52655
epoch: 2 step: 7393, rpn_loss: 0.06561, rcnn_loss: 0.50293, rpn_cls_loss: 0.02587, rpn_reg_loss: 0.03967, rcnn_cls_loss: 0.35669, rcnn_reg_loss: 0.14624, total_loss: 0.56854
epoch: 3 step: 7393, rpn_loss: 0.06940, rcnn_loss: 0.49658, rpn_cls_loss: 0.03769, rpn_reg_loss: 0.03165, rcnn_cls_loss: 0.36353, rcnn_reg_loss: 0.13318, total_loss: 0.56598
...
epoch: 10 step: 7393, rpn_loss: 0.03555, rcnn_loss: 0.32666, rpn_cls_loss: 0.00697, rpn_reg_loss: 0.02859, rcnn_cls_loss: 0.16125, rcnn_reg_loss: 0.16541, total_loss: 0.36221
epoch: 11 step: 7393, rpn_loss: 0.19849, rcnn_loss: 0.47827, rpn_cls_loss: 0.11639, rpn_reg_loss: 0.08209, rcnn_cls_loss: 0.29712, rcnn_reg_loss: 0.18115, total_loss: 0.67676
epoch: 12 step: 7393, rpn_loss: 0.00691, rcnn_loss: 0.10168, rpn_cls_loss: 0.00529, rpn_reg_loss: 0.00162, rcnn_cls_loss: 0.05426, rcnn_reg_loss: 0.04745, total_loss: 0.10859
# eval on ascend
sh run_eval_ascend.sh [VALIDATION_JSON_FILE] [CHECKPOINT_PATH]
checkpoint can be produced in training process.
Eval result will be stored in the example path, whose folder name is "eval". Under this, you can find result like the followings in log.
Average Precision (AP) @[ IoU=0.50:0.95 | area= all | maxDets=100 ] = 0.360
Average Precision (AP) @[ IoU=0.50 | area= all | maxDets=100 ] = 0.586
Average Precision (AP) @[ IoU=0.75 | area= all | maxDets=100 ] = 0.385
Average Precision (AP) @[ IoU=0.50:0.95 | area= small | maxDets=100 ] = 0.229
Average Precision (AP) @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] = 0.402
Average Precision (AP) @[ IoU=0.50:0.95 | area= large | maxDets=100 ] = 0.441
Average Recall (AR) @[ IoU=0.50:0.95 | area= all | maxDets= 1 ] = 0.299
Average Recall (AR) @[ IoU=0.50:0.95 | area= all | maxDets= 10 ] = 0.487
Average Recall (AR) @[ IoU=0.50:0.95 | area= all | maxDets=100 ] = 0.515
Average Recall (AR) @[ IoU=0.50:0.95 | area= small | maxDets=100 ] = 0.346
Average Recall (AR) @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] = 0.562
Average Recall (AR) @[ IoU=0.50:0.95 | area= large | maxDets=100 ] = 0.631
| Parameters | Ascend |
|---|---|
| Model Version | V1 |
| Resource | Ascend 910 ;CPU 2.60GHz,192cores;Memory,755G |
| uploaded Date | 08/31/2020 (month/day/year) |
| MindSpore Version | 1.0.0 |
| Dataset | COCO2017 |
| Training Parameters | epoch=12, batch_size=2 |
| Optimizer | SGD |
| Loss Function | Softmax Cross Entropy ,Sigmoid Cross Entropy,SmoothL1Loss |
| Speed | 1pc: 190 ms/step; 8pcs: 200 ms/step |
| Total time | 1pc: 37.17 hours; 8pcs: 4.89 hours |
| Parameters (M) | 250 |
| Scripts | fasterrcnn script |
| Parameters | Ascend |
|---|---|
| Model Version | V1 |
| Resource | Ascend 910 |
| Uploaded Date | 08/31/2020 (month/day/year) |
| MindSpore Version | 1.0.0 |
| Dataset | COCO2017 |
| batch_size | 2 |
| outputs | mAP |
| Accuracy | IoU=0.50: 57.6% |
| Model for inference | 250M (.ckpt file) |
Please check the official homepage.
MindSpore is a new open source deep learning training/inference framework that could be used for mobile, edge and cloud scenarios.
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