_BASE_: [ '../datasets/coco_instance.yml', '../runtime.yml', '_base_/optimizer_300e.yml', '_base_/yolov6_seg_efficientrep.yml', '_base_/yolov6_seg_reader.yml', ] depth_mult: 0.33 width_mult: 0.50 log_iter: 20 snapshot_epoch: 10 weights: output/yolov6_seg_s_300e_coco/model_final ### reader config TrainReader: batch_size: 8 # default 8 gpus, total bs = 64 input_height: &input_height 640 input_width: &input_width 640 input_size: &input_size [*input_height, *input_width] EvalReader: sample_transforms: - Decode: {} - Resize: {target_size: *input_size, keep_ratio: True, interp: 1} - Pad: {size: *input_size, fill_value: [114., 114., 114.]} - NormalizeImage: {mean: [0., 0., 0.], std: [1., 1., 1.], norm_type: none} - Poly2Mask: {del_poly: True} - Permute: {} batch_size: 1 # EvalReader: # sample_transforms: # - Decode: {} # - Resize: {target_size: *input_size, keep_ratio: False, interp: 1} # #- Pad: {size: *input_size, fill_value: [114., 114., 114.]} # - NormalizeImage: {mean: [0., 0., 0.], std: [1., 1., 1.], norm_type: none} # - Poly2Mask: {del_poly: True} # - Permute: {} # batch_size: 1 # # rect # EvalReader: # sample_transforms: # - Decode: {} # - YOLOv5KeepRatioResize: {target_size: *input_size, batch_shapes: True, size_divisor: 32, extra_pad_ratio: 0.5} # - LetterResize: {scale: *input_size, pad_val: 144, allow_scale_up: False} # - NormalizeImage: {mean: [0., 0., 0.], std: [1., 1., 1.], norm_type: none} # - Permute: {} # batch_size: 1 # only support bs=1 ### model config act: 'relu' training_mode: "repvgg" YOLOv6: backbone: EfficientRep neck: RepBiFPAN yolo_head: EffiDeInsHead post_process: ~ EffiDeInsHead: reg_max: 0 use_dfl: False # False in n/s loss_weight: {cls: 1.0, iou: 2.5}