diff --git a/cfg/pineapple.yaml b/cfg/pineapple.yaml new file mode 100644 index 00000000..bc64897e --- /dev/null +++ b/cfg/pineapple.yaml @@ -0,0 +1,127 @@ +# Ultralytics YOLO 🚀, AGPL-3.0 license +# Default training settings and hyperparameters for medium-augmentation COCO training + +task: detect # (str) YOLO task, i.e. detect, segment, classify, pose +mode: train # (str) YOLO mode, i.e. train, val, predict, export, track, benchmark + +# Train settings ------------------------------------------------------------------------------------------------------- +model: # (str, optional) path to model file, i.e. yolov8n.pt, yolov8n.yaml +data: # (str, optional) path to data file, i.e. coco128.yaml +epochs: 100 # (int) number of epochs to train for +time: # (float, optional) number of hours to train for, overrides epochs if supplied +patience: 100 # (int) epochs to wait for no observable improvement for early stopping of training +batch: 16 # (int) number of images per batch (-1 for AutoBatch) +imgsz: 640 # (int | list) input images size as int for train and val modes, or list[w,h] for predict and export modes +save: True # (bool) save train checkpoints and predict results +save_period: -1 # (int) Save checkpoint every x epochs (disabled if < 1) +val_period: 1 # (int) Validation every x epochs +cache: False # (bool) True/ram, disk or False. Use cache for data loading +device: # (int | str | list, optional) device to run on, i.e. cuda device=0 or device=0,1,2,3 or device=cpu +workers: 8 # (int) number of worker threads for data loading (per RANK if DDP) +project: # (str, optional) project name +name: # (str, optional) experiment name, results saved to 'project/name' directory +exist_ok: False # (bool) whether to overwrite existing experiment +pretrained: True # (bool | str) whether to use a pretrained model (bool) or a model to load weights from (str) +optimizer: auto # (str) optimizer to use, choices=[SGD, Adam, Adamax, AdamW, NAdam, RAdam, RMSProp, auto] +verbose: True # (bool) whether to print verbose output +seed: 0 # (int) random seed for reproducibility +deterministic: True # (bool) whether to enable deterministic mode +single_cls: False # (bool) train multi-class data as single-class +rect: False # (bool) rectangular training if mode='train' or rectangular validation if mode='val' +cos_lr: False # (bool) use cosine learning rate scheduler +close_mosaic: 10 # (int) disable mosaic augmentation for final epochs (0 to disable) +resume: False # (bool) resume training from last checkpoint +amp: True # (bool) Automatic Mixed Precision (AMP) training, choices=[True, False], True runs AMP check +fraction: 1.0 # (float) dataset fraction to train on (default is 1.0, all images in train set) +profile: False # (bool) profile ONNX and TensorRT speeds during training for loggers +freeze: None # (int | list, optional) freeze first n layers, or freeze list of layer indices during training +multi_scale: False # (bool) Whether to use multiscale during training +# Segmentation +overlap_mask: True # (bool) masks should overlap during training (segment train only) +mask_ratio: 4 # (int) mask downsample ratio (segment train only) +# Classification +dropout: 0.0 # (float) use dropout regularization (classify train only) + +# Val/Test settings ---------------------------------------------------------------------------------------------------- +val: True # (bool) validate/test during training +split: val # (str) dataset split to use for validation, i.e. 'val', 'test' or 'train' +save_json: False # (bool) save results to JSON file +save_hybrid: False # (bool) save hybrid version of labels (labels + additional predictions) +conf: # (float, optional) object confidence threshold for detection (default 0.25 predict, 0.001 val) +iou: 0.7 # (float) intersection over union (IoU) threshold for NMS +max_det: 300 # (int) maximum number of detections per image +half: False # (bool) use half precision (FP16) +dnn: False # (bool) use OpenCV DNN for ONNX inference +plots: True # (bool) save plots and images during train/val + +# Predict settings ----------------------------------------------------------------------------------------------------- +source: # (str, optional) source directory for images or videos +vid_stride: 1 # (int) video frame-rate stride +stream_buffer: False # (bool) buffer all streaming frames (True) or return the most recent frame (False) +visualize: False # (bool) visualize model features +augment: False # (bool) apply image augmentation to prediction sources +agnostic_nms: False # (bool) class-agnostic NMS +classes: # (int | list[int], optional) filter results by class, i.e. classes=0, or classes=[0,2,3] +retina_masks: False # (bool) use high-resolution segmentation masks +embed: # (list[int], optional) return feature vectors/embeddings from given layers + +# Visualize settings --------------------------------------------------------------------------------------------------- +show: False # (bool) show predicted images and videos if environment allows +save_frames: False # (bool) save predicted individual video frames +save_txt: False # (bool) save results as .txt file +save_conf: False # (bool) save results with confidence scores +save_crop: False # (bool) save cropped images with results +show_labels: True # (bool) show prediction labels, i.e. 'person' +show_conf: True # (bool) show prediction confidence, i.e. '0.99' +show_boxes: True # (bool) show prediction boxes +line_width: # (int, optional) line width of the bounding boxes. Scaled to image size if None. + +# Export settings ------------------------------------------------------------------------------------------------------ +format: torchscript # (str) format to export to, choices at https://docs.ultralytics.com/modes/export/#export-formats +keras: False # (bool) use Kera=s +optimize: False # (bool) TorchScript: optimize for mobile +int8: False # (bool) CoreML/TF INT8 quantization +dynamic: False # (bool) ONNX/TF/TensorRT: dynamic axes +simplify: False # (bool) ONNX: simplify model +opset: # (int, optional) ONNX: opset version +workspace: 4 # (int) TensorRT: workspace size (GB) +nms: False # (bool) CoreML: add NMS + +# Hyperparameters ------------------------------------------------------------------------------------------------------ +lr0: 0.01 # (float) initial learning rate (i.e. SGD=1E-2, Adam=1E-3) +lrf: 0.01 # (float) final learning rate (lr0 * lrf) +momentum: 0.937 # (float) SGD momentum/Adam beta1 +weight_decay: 0.0005 # (float) optimizer weight decay 5e-4 +warmup_epochs: 3.0 # (float) warmup epochs (fractions ok) +warmup_momentum: 0.8 # (float) warmup initial momentum +warmup_bias_lr: 0.1 # (float) warmup initial bias lr +box: 7.5 # (float) box loss gain +cls: 0.5 # (float) cls loss gain (scale with pixels) +dfl: 1.5 # (float) dfl loss gain +pose: 12.0 # (float) pose loss gain +kobj: 1.0 # (float) keypoint obj loss gain +label_smoothing: 0.0 # (float) label smoothing (fraction) +nbs: 64 # (int) nominal batch size +hsv_h: 0.015 # (float) image HSV-Hue augmentation (fraction) +hsv_s: 0.7 # (float) image HSV-Saturation augmentation (fraction) +hsv_v: 0.4 # (float) image HSV-Value augmentation (fraction) +degrees: 0.0 # (float) image rotation (+/- deg) +translate: 0.1 # (float) image translation (+/- fraction) +scale: 0.5 # (float) image scale (+/- gain) +shear: 0.0 # (float) image shear (+/- deg) +perspective: 0.0 # (float) image perspective (+/- fraction), range 0-0.001 +flipud: 0.0 # (float) image flip up-down (probability) +fliplr: 0.5 # (float) image flip left-right (probability) +bgr: 0.0 # (float) image channel BGR (probability) +mosaic: 1.0 # (float) image mosaic (probability) +mixup: 0.0 # (float) image mixup (probability) +copy_paste: 0.0 # (float) segment copy-paste (probability) +auto_augment: randaugment # (str) auto augmentation policy for classification (randaugment, autoaugment, augmix) +erasing: 0.4 # (float) probability of random erasing during classification training (0-1) +crop_fraction: 1.0 # (float) image crop fraction for classification evaluation/inference (0-1) + +# Custom config.yaml --------------------------------------------------------------------------------------------------- +cfg: # (str, optional) for overriding defaults.yaml + +# Tracker settings ------------------------------------------------------------------------------------------------------ +tracker: botsort.yaml # (str) tracker type, choices=[botsort.yaml, bytetrack.yaml] diff --git a/cfg/sugarcane.yaml b/cfg/sugarcane.yaml new file mode 100644 index 00000000..bc64897e --- /dev/null +++ b/cfg/sugarcane.yaml @@ -0,0 +1,127 @@ +# Ultralytics YOLO 🚀, AGPL-3.0 license +# Default training settings and hyperparameters for medium-augmentation COCO training + +task: detect # (str) YOLO task, i.e. detect, segment, classify, pose +mode: train # (str) YOLO mode, i.e. train, val, predict, export, track, benchmark + +# Train settings ------------------------------------------------------------------------------------------------------- +model: # (str, optional) path to model file, i.e. yolov8n.pt, yolov8n.yaml +data: # (str, optional) path to data file, i.e. coco128.yaml +epochs: 100 # (int) number of epochs to train for +time: # (float, optional) number of hours to train for, overrides epochs if supplied +patience: 100 # (int) epochs to wait for no observable improvement for early stopping of training +batch: 16 # (int) number of images per batch (-1 for AutoBatch) +imgsz: 640 # (int | list) input images size as int for train and val modes, or list[w,h] for predict and export modes +save: True # (bool) save train checkpoints and predict results +save_period: -1 # (int) Save checkpoint every x epochs (disabled if < 1) +val_period: 1 # (int) Validation every x epochs +cache: False # (bool) True/ram, disk or False. Use cache for data loading +device: # (int | str | list, optional) device to run on, i.e. cuda device=0 or device=0,1,2,3 or device=cpu +workers: 8 # (int) number of worker threads for data loading (per RANK if DDP) +project: # (str, optional) project name +name: # (str, optional) experiment name, results saved to 'project/name' directory +exist_ok: False # (bool) whether to overwrite existing experiment +pretrained: True # (bool | str) whether to use a pretrained model (bool) or a model to load weights from (str) +optimizer: auto # (str) optimizer to use, choices=[SGD, Adam, Adamax, AdamW, NAdam, RAdam, RMSProp, auto] +verbose: True # (bool) whether to print verbose output +seed: 0 # (int) random seed for reproducibility +deterministic: True # (bool) whether to enable deterministic mode +single_cls: False # (bool) train multi-class data as single-class +rect: False # (bool) rectangular training if mode='train' or rectangular validation if mode='val' +cos_lr: False # (bool) use cosine learning rate scheduler +close_mosaic: 10 # (int) disable mosaic augmentation for final epochs (0 to disable) +resume: False # (bool) resume training from last checkpoint +amp: True # (bool) Automatic Mixed Precision (AMP) training, choices=[True, False], True runs AMP check +fraction: 1.0 # (float) dataset fraction to train on (default is 1.0, all images in train set) +profile: False # (bool) profile ONNX and TensorRT speeds during training for loggers +freeze: None # (int | list, optional) freeze first n layers, or freeze list of layer indices during training +multi_scale: False # (bool) Whether to use multiscale during training +# Segmentation +overlap_mask: True # (bool) masks should overlap during training (segment train only) +mask_ratio: 4 # (int) mask downsample ratio (segment train only) +# Classification +dropout: 0.0 # (float) use dropout regularization (classify train only) + +# Val/Test settings ---------------------------------------------------------------------------------------------------- +val: True # (bool) validate/test during training +split: val # (str) dataset split to use for validation, i.e. 'val', 'test' or 'train' +save_json: False # (bool) save results to JSON file +save_hybrid: False # (bool) save hybrid version of labels (labels + additional predictions) +conf: # (float, optional) object confidence threshold for detection (default 0.25 predict, 0.001 val) +iou: 0.7 # (float) intersection over union (IoU) threshold for NMS +max_det: 300 # (int) maximum number of detections per image +half: False # (bool) use half precision (FP16) +dnn: False # (bool) use OpenCV DNN for ONNX inference +plots: True # (bool) save plots and images during train/val + +# Predict settings ----------------------------------------------------------------------------------------------------- +source: # (str, optional) source directory for images or videos +vid_stride: 1 # (int) video frame-rate stride +stream_buffer: False # (bool) buffer all streaming frames (True) or return the most recent frame (False) +visualize: False # (bool) visualize model features +augment: False # (bool) apply image augmentation to prediction sources +agnostic_nms: False # (bool) class-agnostic NMS +classes: # (int | list[int], optional) filter results by class, i.e. classes=0, or classes=[0,2,3] +retina_masks: False # (bool) use high-resolution segmentation masks +embed: # (list[int], optional) return feature vectors/embeddings from given layers + +# Visualize settings --------------------------------------------------------------------------------------------------- +show: False # (bool) show predicted images and videos if environment allows +save_frames: False # (bool) save predicted individual video frames +save_txt: False # (bool) save results as .txt file +save_conf: False # (bool) save results with confidence scores +save_crop: False # (bool) save cropped images with results +show_labels: True # (bool) show prediction labels, i.e. 'person' +show_conf: True # (bool) show prediction confidence, i.e. '0.99' +show_boxes: True # (bool) show prediction boxes +line_width: # (int, optional) line width of the bounding boxes. Scaled to image size if None. + +# Export settings ------------------------------------------------------------------------------------------------------ +format: torchscript # (str) format to export to, choices at https://docs.ultralytics.com/modes/export/#export-formats +keras: False # (bool) use Kera=s +optimize: False # (bool) TorchScript: optimize for mobile +int8: False # (bool) CoreML/TF INT8 quantization +dynamic: False # (bool) ONNX/TF/TensorRT: dynamic axes +simplify: False # (bool) ONNX: simplify model +opset: # (int, optional) ONNX: opset version +workspace: 4 # (int) TensorRT: workspace size (GB) +nms: False # (bool) CoreML: add NMS + +# Hyperparameters ------------------------------------------------------------------------------------------------------ +lr0: 0.01 # (float) initial learning rate (i.e. SGD=1E-2, Adam=1E-3) +lrf: 0.01 # (float) final learning rate (lr0 * lrf) +momentum: 0.937 # (float) SGD momentum/Adam beta1 +weight_decay: 0.0005 # (float) optimizer weight decay 5e-4 +warmup_epochs: 3.0 # (float) warmup epochs (fractions ok) +warmup_momentum: 0.8 # (float) warmup initial momentum +warmup_bias_lr: 0.1 # (float) warmup initial bias lr +box: 7.5 # (float) box loss gain +cls: 0.5 # (float) cls loss gain (scale with pixels) +dfl: 1.5 # (float) dfl loss gain +pose: 12.0 # (float) pose loss gain +kobj: 1.0 # (float) keypoint obj loss gain +label_smoothing: 0.0 # (float) label smoothing (fraction) +nbs: 64 # (int) nominal batch size +hsv_h: 0.015 # (float) image HSV-Hue augmentation (fraction) +hsv_s: 0.7 # (float) image HSV-Saturation augmentation (fraction) +hsv_v: 0.4 # (float) image HSV-Value augmentation (fraction) +degrees: 0.0 # (float) image rotation (+/- deg) +translate: 0.1 # (float) image translation (+/- fraction) +scale: 0.5 # (float) image scale (+/- gain) +shear: 0.0 # (float) image shear (+/- deg) +perspective: 0.0 # (float) image perspective (+/- fraction), range 0-0.001 +flipud: 0.0 # (float) image flip up-down (probability) +fliplr: 0.5 # (float) image flip left-right (probability) +bgr: 0.0 # (float) image channel BGR (probability) +mosaic: 1.0 # (float) image mosaic (probability) +mixup: 0.0 # (float) image mixup (probability) +copy_paste: 0.0 # (float) segment copy-paste (probability) +auto_augment: randaugment # (str) auto augmentation policy for classification (randaugment, autoaugment, augmix) +erasing: 0.4 # (float) probability of random erasing during classification training (0-1) +crop_fraction: 1.0 # (float) image crop fraction for classification evaluation/inference (0-1) + +# Custom config.yaml --------------------------------------------------------------------------------------------------- +cfg: # (str, optional) for overriding defaults.yaml + +# Tracker settings ------------------------------------------------------------------------------------------------------ +tracker: botsort.yaml # (str) tracker type, choices=[botsort.yaml, bytetrack.yaml]