--- license: mit license_name: sla0044 license_link: LICENSE --- # OSNet ## **Use case** : `Re-Identification` # Model description OSNet is a lightweight convolutional neural network architecture designed specifically for person re-identification tasks. It introduces omni-scale feature learning, enabling the network to capture multi-scale information efficiently within a single residual block. Key features of OSNet: - Omni-scale feature learning for robust representation. - Lightweight design with fewer parameters compared to traditional re-identification models. - Suitable for deployment on resource-constrained devices. For more details, see the OSNet paper: https://arxiv.org/abs/1905.00953 The model is quantized using ONNX quantization tools. ## Network information | Network Information | Value | |-------------------------|-----------------| | Framework | TensorFlow Lite | | MParams alpha=0.25 | 0.197 M | | Quantization | int8 | | Provenance | https://kaiyangzhou.github.io/deep-person-reid/index.html | | Paper | https://arxiv.org/abs/1905.0095 | The models are quantized using TF Lite post-training quantization tools. ## Network inputs / outputs For an image resolution of NxM and P classes | Input Shape | Description | | ----- | ----------- | | (1, N, M, 3) | Single NxM RGB image with UINT8 values between 0 and 255 | | Output Shape | Description | | ----- | ----------- | | (1, P) | Per-class confidence for P classes in FLOAT32| ## Recommended platforms | Platform | Supported | Recommended | |----------|-----------|-----------| | STM32L0 |[]|[]| | STM32L4 |[x]|[]| | STM32U5 |[x]|[]| | STM32H7 |[x]|[x]| | STM32MP1 |[x]|[x]| | STM32MP2 |[x]|[x]| | STM32N6 |[x]|[x]| # Performances ## Metricss - Measures are done with default STM32Cube.AI configuration with enabled input / output allocated option. - `tfs` stands for "training from scratch", meaning that the model weights were randomly initialized before training. - `tl` stands for "transfer learning", meaning that the model backbone weights were initialized from a pre-trained model, then only the last layer was unfrozen during the training. - `fft` stands for "full fine-tuning", meaning that the full model weights were initialized from a transfer learning pre-trained model, and all the layers were unfrozen during the training. ### Reference **NPU** memory footprint on DeepSportradar dataset (see Accuracy for details on dataset) |Model | Dataset | Format | Resolution | Series | Internal RAM | External RAM | Weights Flash | STEdgeAI Core version | |----------|------------------|--------|-------------|------------------|------------------|---------------------|---------------|-------------------------| | [OSNet 0.25 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a025_256_128_tfs/osnet_a025_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32N6 | 480 | 0 | 404.94 | 3.0.0 | | [OSNet 1.0 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a100_256_128_tfs/osnet_a100_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32N6 | 1440 | 0 | 2375.33 | 3.0.0 | ### Reference **NPU** inference time on DeepSportradar dataset (see Accuracy for details on dataset) | Model | Dataset | Format | Resolution | Board | Execution Engine | Inference time (ms) | Inf / sec | STEdgeAI Core version | |--------|------------------|--------|-------------|------------------|------------------|---------------------|-----------| -----------------------| | [OSNet 0.25 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a025_256_128_tfs/osnet_a025_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32N6570-DK | NPU/MCU | 3.53 | 283.3 | 3.0.0 | | [OSNet 1.0 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a100_256_128_tfs/osnet_a100_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32N6570-DK | NPU/MCU | 13.44 | 74.4 | 3.0.0 | ### Reference **MCU** memory footprint based on DeepSportradar dataset (see Accuracy for details on dataset) |Model | Dataset | Format | Resolution | Series | Internal RAM | External RAM | Weights Flash | STEdgeAI Core version | |----------|------------------|--------|-------------|------------------|------------------|---------------------|---------------|-------------------------| | [OSNet 0.25 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a025_256_128_tfs/osnet_a025_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32H7 | 331.45 | 0 | 139.52 | 3.0.0 | | [OSNet 1.0 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a100_256_128_tfs/osnet_a100_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32H7 | 396.01 | 1024.0 | 1892.75 | 3.0.0 | ### Reference **MCU** inference time on DeepSportradar dataset (see Accuracy for details on dataset) | Model | Dataset | Format | Resolution | Board | Execution Engine | Inference time (ms) | Inf / sec | STEdgeAI Core version | |--------|------------------|--------|-------------|------------------|------------------|---------------------|-----------| -----------------------| | [OSNet 0.25 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a025_256_128_tfs/osnet_a025_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32H747I-DISCO | 1 CPU | 495.13 | 2.02 | 3.0.0 | | [OSNet 1.0 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a100_256_128_tfs/osnet_a100_256_128_tfs_int8.tflite) | DeepSportradar | Int8 | 256x128x3 | STM32H747I-DISCO | 1 CPU | 3894.82 | 0.26 | 3.0.0 | ### Performance with DeepSportradar ReID dataset Dataset details: [link](https://github.com/DeepSportradar/player-reidentification-challenge) , License [Apache-2.0](https://github.com/DeepSportradar/player-reidentification-challenge?tab=Apache-2.0-1-ov-file#readme) , Number of identities: 486 (train: 436, test: 50), Number of images: 9529 (train: 8569, test_query: 50, test_gallery: 910) | Model | Format | Resolution | mAP | rank-1 accuracy |rank-5 accuracy |rank-10 accuracy | |-------|--------|------------|----------------|-----------------|----------------|-----------------| | [OSNet 0.25 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a025_256_128_tfs/osnet_a025_256_128_tfs_int8.tflite) | Int8 | 256x128 | 70.27 % | 92.0 % | 96.0 % | 96.0 % | | [OSNet 1.0 tfs](https://github.com/STMicroelectronics/stm32ai-modelzoo/tree/main/re_identification/osnet/ST_pretrainedmodel_public_dataset/DeepSportradar/osnet_a100_256_128_tfs/osnet_a100_256_128_tfs_int8.tflite) | Int8 | 256x128 | 73.84 % | 90.0 % | 98.0 % | 98.0 % | ## Retraining and Integration in a simple example: Please refer to the stm32ai-modelzoo-services GitHub [here](https://github.com/STMicroelectronics/stm32ai-modelzoo-services) # References [1] The DeepSportradar Player Re-Identification Challenge (2023) [Online]. Available: https://github.com/DeepSportradar/player-reidentification-challenge.