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from yacs.config import CfgNode as CN
def get_perspective2d_cfg_defaults():
"""
PerspectiveNet and ParamNet configs.
"""
cfg = CN()
cfg.VIS_PERIOD = 100
cfg.INPUT = CN()
cfg.INPUT.ONLINE_CROP = False
cfg.INPUT.FORMAT = "BGR"
cfg.DATASETS = CN()
cfg.DATASETS.TRAIN = []
cfg.DATASETS.TEST = []
cfg.DATALOADER = CN()
cfg.DATALOADER.AUGMENTATION = False
cfg.DATALOADER.AUGMENTATION_TYPE = "geometry"
cfg.DATALOADER.RESIZE = [320, 320] # Height, Width
cfg.DATALOADER.AUGMENTATION_FUN = "default"
cfg.DATALOADER.NO_GEOMETRY_AUG = False # requested by R3 cvpr2023
cfg.MODEL = CN()
cfg.MODEL.GRAVITY_ON = False
cfg.MODEL.LATITUDE_ON = False
cfg.MODEL.RECOVER_RPF = False
cfg.MODEL.RECOVER_PP = False
cfg.MODEL.BACKBONE = CN()
cfg.MODEL.BACKBONE.NAME = "mitb3"
cfg.MODEL.PERSFORMER_HEADS = CN()
cfg.MODEL.WEIGHTS = ""
cfg.MODEL.PERSFORMER_HEADS.NAME = "StandardPersformerHeads"
cfg.MODEL.LATITUDE_DECODER = CN()
cfg.MODEL.LATITUDE_DECODER.NAME = "LatitudeDecoder"
cfg.MODEL.LATITUDE_DECODER.LOSS_WEIGHT = 1.0
cfg.MODEL.LATITUDE_DECODER.LOSS_TYPE = "regression"
cfg.MODEL.LATITUDE_DECODER.NUM_CLASSES = 1
cfg.MODEL.LATITUDE_DECODER.IGNORE_VALUE = -1
cfg.MODEL.GRAVITY_DECODER = CN()
cfg.MODEL.GRAVITY_DECODER.NAME = "GravityDecoder"
cfg.MODEL.GRAVITY_DECODER.LOSS_WEIGHT = 1.0
cfg.MODEL.GRAVITY_DECODER.LOSS_TYPE = "classification"
cfg.MODEL.GRAVITY_DECODER.NUM_CLASSES = 73
cfg.MODEL.GRAVITY_DECODER.IGNORE_VALUE = 72
cfg.MODEL.HEIGHT_DECODER = CN()
cfg.MODEL.HEIGHT_DECODER.NAME = "HeightDecoder"
cfg.MODEL.HEIGHT_DECODER.LOSS_WEIGHT = 1.0
cfg.MODEL.PARAM_DECODER = CN()
cfg.MODEL.PARAM_DECODER.NAME = "ParamNet"
cfg.MODEL.PARAM_DECODER.LOSS_TYPE = "regression"
cfg.MODEL.PARAM_DECODER.LOSS_WEIGHT = 1.0
cfg.MODEL.PARAM_DECODER.PREDICT_PARAMS = [
"roll",
"pitch",
"rel_focal",
"rel_cx",
"rel_cy",
]
cfg.MODEL.PARAM_DECODER.SYNTHETIC_PRETRAIN = False
cfg.MODEL.PARAM_DECODER.INPUT_SIZE = 320
cfg.MODEL.PARAM_DECODER.DEBUG_LAT = False
cfg.MODEL.PARAM_DECODER.DEBUG_UP = False
cfg.MODEL.FREEZE = []
cfg.DEBUG_ON = False
cfg.OVERFIT_ON = False
"""
The configs below are not used.
"""
cfg.MODEL.CENTER_ON = False
cfg.MODEL.HEIGHT_ON = False
cfg.MODEL.PIXEL_MEAN = [103.53, 116.28, 123.675]
cfg.MODEL.PIXEL_STD = [1.0, 1.0, 1.0]
cfg.MODEL.FPN_HEADS = CN()
cfg.MODEL.FPN_HEADS.NAME = "StandardFPNHeads"
# Gravity
cfg.MODEL.FPN_GRAVITY_HEAD = CN()
cfg.MODEL.FPN_GRAVITY_HEAD.NAME = "GravityFPNHead"
cfg.MODEL.FPN_GRAVITY_HEAD.IN_FEATURES = ["p2", "p3", "p4", "p5"]
# Label in the semantic segmentation ground truth that is ignored, i.e., no loss is calculated for
# the correposnding pixel.
cfg.MODEL.FPN_GRAVITY_HEAD.IGNORE_VALUE = 360
# Number of classes in the semantic segmentation head
cfg.MODEL.FPN_GRAVITY_HEAD.NUM_CLASSES = 361
# Number of channels in the 3x3 convs inside semantic-FPN heads.
cfg.MODEL.FPN_GRAVITY_HEAD.CONVS_DIM = 128
# Outputs from semantic-FPN heads are up-scaled to the COMMON_STRIDE stride.
cfg.MODEL.FPN_GRAVITY_HEAD.COMMON_STRIDE = 4
# Normalization method for the convolution layers. Options: "" (no norm), "GN".
cfg.MODEL.FPN_GRAVITY_HEAD.NORM = "GN"
cfg.MODEL.FPN_GRAVITY_HEAD.LOSS_WEIGHT = 1.0
# Latitude
cfg.MODEL.FPN_LATITUDE_HEAD = CN()
cfg.MODEL.FPN_LATITUDE_HEAD.NAME = "LatitudeFPNHead"
cfg.MODEL.FPN_LATITUDE_HEAD.IN_FEATURES = ["p2", "p3", "p4", "p5"]
# Label in the semantic segmentation ground truth that is ignored, i.e., no loss is calculated for
# the correposnding pixel.
cfg.MODEL.FPN_LATITUDE_HEAD.IGNORE_VALUE = -1
# Number of classes in the semantic segmentation head
cfg.MODEL.FPN_LATITUDE_HEAD.NUM_CLASSES = 9
# Number of channels in the 3x3 convs inside semantic-FPN heads.
cfg.MODEL.FPN_LATITUDE_HEAD.CONVS_DIM = 128
# Outputs from semantic-FPN heads are up-scaled to the COMMON_STRIDE stride.
cfg.MODEL.FPN_LATITUDE_HEAD.COMMON_STRIDE = 4
# Normalization method for the convolution layers. Options: "" (no norm), "GN".
cfg.MODEL.FPN_LATITUDE_HEAD.NORM = "GN"
cfg.MODEL.FPN_LATITUDE_HEAD.LOSS_WEIGHT = 1.0
# Center
cfg.MODEL.FPN_CENTER_HEAD = CN()
cfg.MODEL.FPN_CENTER_HEAD.NAME = "CenterFPNHead"
cfg.MODEL.FPN_CENTER_HEAD.IN_FEATURES = ["p2", "p3", "p4", "p5"]
# Label in the semantic segmentation ground truth that is ignored, i.e., no loss is calculated for
# the correposnding pixel.
cfg.MODEL.FPN_CENTER_HEAD.IGNORE_VALUE = 360
# Number of classes in the semantic segmentation head
cfg.MODEL.FPN_CENTER_HEAD.NUM_CLASSES = 30
# Number of channels in the 3x3 convs inside semantic-FPN heads.
cfg.MODEL.FPN_CENTER_HEAD.CONVS_DIM = 128
# Outputs from semantic-FPN heads are up-scaled to the COMMON_STRIDE stride.
cfg.MODEL.FPN_CENTER_HEAD.COMMON_STRIDE = 4
# Normalization method for the convolution layers. Options: "" (no norm), "GN".
cfg.MODEL.FPN_CENTER_HEAD.NORM = "GN"
cfg.MODEL.FPN_CENTER_HEAD.LOSS_WEIGHT = 1.0
############################################################
return cfg