# Configuration ## Minimal TIF Workflow ```yaml vipr: inference: load_data: handler: gid_tif_reader parameters: data_path: '@vipr_gid/mlgiddetect/examples/data/w4_mapbbr32.tif' frame_index: 0 load_model: handler: mlgiddetect parameters: model_name: frcnn device: cpu input_size: '800,800' prediction: handler: mlgiddetect_predictor parameters: score_threshold: 0.8 postprocess: handler: mlgiddetect_postprocessor parameters: postprocess_boxes: true ``` ## Minimal HDF5 Workflow ```yaml vipr: inference: load_data: handler: gid_pygid_h5_reader parameters: data_path: /path/to/data.h5 frame_index: 0 # optional: # h5_img_path: entry/analysis/q_image # h5_qxy_path: entry/analysis/q_xy # h5_qz_path: entry/analysis/q_z ``` ## Optional Preprocess Filter ```yaml vipr: inference: filters: INFERENCE_PREPROCESS_PRE_FILTER: - class: vipr_gid.mlgiddetect.preprocess.polar_transform_filter.PolarTransformFilter enabled: true method: preprocess_polar parameters: {} weight: 0 ``` ## Key Parameters ### `load_data` - `gid_tif_reader`: - `data_path` (required) - `frame_index` (default `0`) - `gid_pygid_h5_reader`: - `data_path` (required) - `frame_index` (default `0`) - `h5_img_path`, `h5_qxy_path`, `h5_qz_path` (optional) ### `load_model` (`mlgiddetect`) - `model_path` (optional; if missing, model is downloaded/cached) - `model_name` (`frcnn`, `rfdetrbase`, `rfdetrlarge`) - `device` (`cpu` or `cuda`) - `input_size` (e.g. `'800,800'`) ### `prediction` (`mlgiddetect_predictor`) - `score_threshold` (default `0.5`) ### `postprocess` (`mlgiddetect_postprocessor`) - `postprocess_boxes` - `min_q_pix` - `merge_min_score`, `merge_min_iou`, `merge_max_q`, `merge_quantile` - `nms_level`, `final_score_level`