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PointCloudObjectDetector

class flash.pointcloud.detection.model.PointCloudObjectDetector(num_classes, backbone='pointpillars_kitti', backbone_kwargs=None, loss_fn=None, optimizer='Adam', lr_scheduler=None, metrics=None, learning_rate=None, lambda_loss_cls=1.0, lambda_loss_bbox=1.0, lambda_loss_dir=1.0)[source]

The PointCloudObjectDetector is a ClassificationTask that classifies pointcloud data.

Parameters
classmethod available_finetuning_strategies(cls)

Returns a list containing the keys of the available Finetuning Strategies.

Return type

List[str]

classmethod available_lr_schedulers(cls)

Returns a list containing the keys of the available LR schedulers.

Return type

List[str]

classmethod available_optimizers(cls)

Returns a list containing the keys of the available Optimizers.

Return type

List[str]

classmethod available_outputs(cls)

Returns the list of available outputs (that can be used during prediction or serving) for this Task.

Examples

..testsetup:

>>> from flash import Task
>>> print(Task.available_outputs())
['preds', 'raw']
Return type

List[str]

forward(x)[source]

First call the backbone, then the model head.

Return type

Tensor

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