YOLO v2 Tiny is a real-time object detection model implemented with Keras* from this repository and converted to TensorFlow* framework. This model was pre-trained on Common Objects in Context (COCO) dataset with 80 classes.
Metric | Value |
---|---|
Type | Detection |
GFLOPs | 5.424 |
MParams | 11.229 |
Source framework | Keras* |
Accuracy metrics obtained on Common Objects in Context (COCO) validation dataset for converted model.
Metric | Value |
---|---|
mAP | 27.34% |
COCO mAP | 29.11% |
Image, name - image_input
, shape - 1, 416, 416, 3
, format is B, H, W, C
, where:
B
- batch sizeH
- heightW
- widthC
- channel
Channel order is RGB
.
Scale value - 255.
Image, name - image_input
, shape - 1, 416, 416, 3
, format is B, H, W, C
, where:
B
- batch sizeH
- heightW
- widthC
- channel
Channel order is BGR
.
The array of detection summary info, name - conv2d_9/BiasAdd
, shape - 1, 13, 13, 425
, format is B, Cx, Cy, N*85
, where:
B
- batch sizeCx
,Cy
- cell indexN
- number of detection boxes for cell
Detection box has format [x
, y
, h
, w
, box_score
, class_no_1
, ..., class_no_80
], where:
- (
x
,y
) - raw coordinates of box center, apply sigmoid function to get coordinates relative to the cell h
,w
- raw height and width of box, apply exponential function and multiply by corresponding anchors to get height and width values relative to the cellbox_score
- confidence of detection box, apply sigmoid function to get confidence in [0, 1] rangeclass_no_1
, ...,class_no_80
- probability distribution over the classes in logits format, apply softmax function and multiply by obtained confidence value to get confidence of each class
The model was trained on Common Objects in Context (COCO) dataset version with 80 categories of object. Mapping to class names provided in <omz_dir>/data/dataset_classes/coco_80cl.txt
file.
The anchor values are 0.57273,0.677385, 1.87446,2.06253, 3.33843,5.47434, 7.88282,3.52778, 9.77052,9.16828
.
The array of detection summary info, name - conv2d_9/BiasAdd/YoloRegion
, shape - 1, 71825
, which could be reshaped to 1, 425, 13, 13
with format B, N*85, Cx, Cy
, where:
B
- batch sizeN
- number of detection boxes for cellCx
,Cy
- cell index
Detection box has format [x
, y
, h
, w
, box_score
, class_no_1
, ..., class_no_80
], where:
- (
x
,y
) - coordinates of box center relative to the cell h
,w
- raw height and width of box, apply exponential function and multiply with corresponding anchors to get height and width values relative to the cellbox_score
- confidence of detection box in [0, 1] rangeclass_no_1
, ...,class_no_80
- probability distribution over the classes in the [0, 1] range, multiply by confidence value to get confidence of each class
The model was trained on Common Objects in Context (COCO) dataset version with 80 categories of object. Mapping to class names provided in <omz_dir>/data/dataset_classes/coco_80cl.txt
file.
The anchor values are 0.57273,0.677385, 1.87446,2.06253, 3.33843,5.47434, 7.88282,3.52778, 9.77052,9.16828
.
You can download models and if necessary convert them into OpenVINO™ IR format using the Model Downloader and other automation tools as shown in the examples below.
An example of using the Model Downloader:
omz_downloader --name <model_name>
An example of using the Model Converter:
omz_converter --name <model_name>
The model can be used in the following demos provided by the Open Model Zoo to show its capabilities:
The original model is distributed under the following license:
MIT License
Copyright (c) 2019 david8862
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