# global system: fed_algo: "FedAvg" # federated learning algorithm model_name: "yolo_v11_n" # yolo_v11_n, yolo_v11_t, yolo_v11_s, yolo_v11_m, yolo_v11_l, yolo_v11_x i_seed: 202509 # initial random seed num_client: 100 # total number of clients num_round: 500 # total number of communication rounds num_local_class: 1 # number of classes per client res_root: "results" # root directory for results dataset_path: "/home/image1325/ssd1/dataset/uav/" # train_txt: "train.txt" # path to training set txt file # val_txt: "val.txt" # path to validation set txt file # test_txt: "test.txt" # path to test set txt file local_batch_size: 32 # local training batch size val_batch_size: 16 # validation batch size num_workers: 4 # number of data loader workers min_data: 640 # minimum number of images per client max_data: 720 # maximum number of images per client partition_mode: "overlap" # "overlap" or "disjoint" connection_ratio: 1 # connection ratio, e.g., 1.0 means all clients # local training: min_lr: 0.000100000000 # initial learning rate max_lr: 0.010000000000 # maximum learning rate momentum: 0.9370000000 # SGD momentum/Adam beta1 weight_decay: 0.000500 # optimizer weight decay warmup_epochs: 3.00000 # warmup epochs box: 7.500000000000000 # box loss gain cls: 0.500000000000000 # cls loss gain dfl: 1.500000000000000 # dfl loss gain hsv_h: 0.0150000000000 # image HSV-Hue augmentation (fraction) hsv_s: 0.7000000000000 # image HSV-Saturation augmentation (fraction) hsv_v: 0.4000000000000 # image HSV-Value augmentation (fraction) degrees: 0.00000000000 # image rotation (+/- deg) translate: 0.100000000 # image translation (+/- fraction) scale: 0.5000000000000 # image scale (+/- gain) shear: 0.0000000000000 # image shear (+/- deg) flip_ud: 0.00000000000 # image flip up-down (probability) flip_lr: 0.50000000000 # image flip left-right (probability) mosaic: 1.000000000000 # image mosaic (probability) mix_up: 0.000000000000 # image mix-up (probability) names: 0: uav