MODEL: META_ARCHITECTURE: "RetinaNet" BACKBONE: NAME: "build_retinanet_resnet_fpn_backbone" RESNETS: OUT_FEATURES: ["res3", "res4", "res5"] ANCHOR_GENERATOR: SIZES: !!python/object/apply:eval ["[[x, x * 2**(1.0/3), x * 2**(2.0/3) ] for x in [32, 64, 128, 256, 512 ]]"] FPN: IN_FEATURES: ["res3", "res4", "res5"] RETINANET: IOU_THRESHOLDS: [0.4, 0.5] IOU_LABELS: [0, -1, 1] SMOOTH_L1_LOSS_BETA: 0.0 DATASETS: TRAIN: ("coco_2017_train",) TEST: ("coco_2017_val",) SOLVER: IMS_PER_BATCH: 16 BASE_LR: 0.01 # Note that RetinaNet uses a different default learning rate STEPS: (60000, 80000) MAX_ITER: 90000 INPUT: MIN_SIZE_TRAIN: (640, 672, 704, 736, 768, 800) VERSION: 2