Skip to content

Vision - Segmentation 2D

Category: task.vision.segmentation.2d
Version: 1.0.1
UUID: 74ca69b938564a4b39c028862ed57524f364687aab427e9eebbb3ed35189f210
Execution context: leip_af

Value Parameters

Name Synonyms Type Values Help
Training Batch Size train.batch_size_train scalar int, min: 1
Validation Batch Size train.batch_size_val scalar int, min: 1
Random Number Generator Seed global_seed,
task.global_seed,
experiment.seed
scalar int
Target Image Height target.height scalar int, min: 1
Experiment Name experiment.name scalar string
Normalization Scheme data.normalization choice imagenet
inception
yolo
The normalization is applied at augmentation time. These names are proxies to the mean and standard deviation to be applied to the images in the dataset. The yolo option applies no normalization at all.
Number of parallel workers train.num_workers scalar int, min: 0
Target Image Width target.width scalar int

Constraints

  1. Model has to be a 2D segmentation model: model \(\in\) model.segmentation.2d
  2. Data generator has to be a 2D segmentation data generator: data_generator \(\in\) data_generator.vision.segmentation.2d
  3. Evaluation has use a 2D segmentation metric: metric \(\in\) metric.segmentation.2d
  4. Data report has to use a 2D segmentation format: data_report \(\in\) data_report.segmentation.2d

This component fits into

Name UUID Synonyms
Full Recipe 8b4b05... task