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@ -68,7 +68,7 @@ Fine-tune the LPR feature using these optional parameters:
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- Depending on the resolution of your camera's `detect` stream, you can increase this value to ignore small or distant plates.
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- **`device`**: Device to use to run license plate recognition models.
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- Default: `CPU`
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- This can be `CPU` or `GPU`. For users without a model that detects license plates natively, using a GPU may increase performance of the YOLOv9 license plate detector model.
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- This can be `CPU` or `GPU`. For users without a model that detects license plates natively, using a GPU may increase performance of the models, especially the YOLOv9 license plate detector model.
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### Recognition
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@ -170,6 +170,7 @@ An example configuration for a dedicated LPR camera using a Frigate+ model:
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# LPR global configuration
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lpr:
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enabled: True
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device: CPU # can also be GPU if available
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# Dedicated LPR camera configuration
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cameras:
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@ -221,6 +222,7 @@ An example configuration for a dedicated LPR camera using the secondary pipeline
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# LPR global configuration
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lpr:
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enabled: True
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device: CPU # can also be GPU if available
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detection_threshold: 0.7 # change if necessary
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# Dedicated LPR camera configuration
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