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losses.proto
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syntax = "proto2";
package object_detection.protos;
// Message for configuring the localization loss, classification loss and hard
// example miner used for training object detection models. See core/losses.py
// for details
message Loss {
// Localization loss to use.
optional LocalizationLoss localization_loss = 1;
// Classification loss to use.
optional ClassificationLoss classification_loss = 2;
// If not left to default, applies hard example mining.
optional HardExampleMiner hard_example_miner = 3;
// Classification loss weight.
optional float classification_weight = 4 [default=1.0];
// Localization loss weight.
optional float localization_weight = 5 [default=1.0];
// If not left to default, applies random example sampling.
optional RandomExampleSampler random_example_sampler = 6;
// Equalization loss.
message EqualizationLoss {
// Weight equalization loss strength.
optional float weight = 1 [default=0.0];
// When computing equalization loss, ops that start with
// equalization_exclude_prefixes will be ignored. Only used when
// equalization_weight > 0.
repeated string exclude_prefixes = 2;
}
optional EqualizationLoss equalization_loss = 7;
enum ExpectedLossWeights {
NONE = 0;
// Use expected_classification_loss_by_expected_sampling
// from third_party/tensorflow_models/object_detection/utils/ops.py
EXPECTED_SAMPLING = 1;
// Use expected_classification_loss_by_reweighting_unmatched_anchors
// from third_party/tensorflow_models/object_detection/utils/ops.py
REWEIGHTING_UNMATCHED_ANCHORS = 2;
}
// Method to compute expected loss weights with respect to balanced
// positive/negative sampling scheme. If NONE, use explicit sampling.
// TODO(birdbrain): Move under ExpectedLossWeights.
optional ExpectedLossWeights expected_loss_weights = 18 [default = NONE];
// Minimum number of effective negative samples.
// Only applies if expected_loss_weights is not NONE.
// TODO(birdbrain): Move under ExpectedLossWeights.
optional float min_num_negative_samples = 19 [default=0];
// Desired number of effective negative samples per positive sample.
// Only applies if expected_loss_weights is not NONE.
// TODO(birdbrain): Move under ExpectedLossWeights.
optional float desired_negative_sampling_ratio = 20 [default=3];
}
// Configuration for bounding box localization loss function.
message LocalizationLoss {
oneof localization_loss {
WeightedL2LocalizationLoss weighted_l2 = 1;
WeightedSmoothL1LocalizationLoss weighted_smooth_l1 = 2;
WeightedIOULocalizationLoss weighted_iou = 3;
L1LocalizationLoss l1_localization_loss = 4;
}
}
// L2 location loss: 0.5 * ||weight * (a - b)|| ^ 2
message WeightedL2LocalizationLoss {
// DEPRECATED, do not use.
// Output loss per anchor.
optional bool anchorwise_output = 1 [default=false];
}
// SmoothL1 (Huber) location loss.
// The smooth L1_loss is defined elementwise as .5 x^2 if |x| <= delta and
// delta * (|x|-0.5*delta) otherwise, where x is the difference between
// predictions and target.
message WeightedSmoothL1LocalizationLoss {
// DEPRECATED, do not use.
// Output loss per anchor.
optional bool anchorwise_output = 1 [default=false];
// Delta value for huber loss.
optional float delta = 2 [default=1.0];
}
// Intersection over union location loss: 1 - IOU
message WeightedIOULocalizationLoss {
}
// L1 Localization Loss.
message L1LocalizationLoss {
}
// Configuration for class prediction loss function.
message ClassificationLoss {
oneof classification_loss {
WeightedSigmoidClassificationLoss weighted_sigmoid = 1;
WeightedSoftmaxClassificationLoss weighted_softmax = 2;
WeightedSoftmaxClassificationAgainstLogitsLoss weighted_logits_softmax = 5;
BootstrappedSigmoidClassificationLoss bootstrapped_sigmoid = 3;
SigmoidFocalClassificationLoss weighted_sigmoid_focal = 4;
PenaltyReducedLogisticFocalLoss penalty_reduced_logistic_focal_loss = 6;
}
}
// Classification loss using a sigmoid function over class predictions.
message WeightedSigmoidClassificationLoss {
// DEPRECATED, do not use.
// Output loss per anchor.
optional bool anchorwise_output = 1 [default=false];
}
// Sigmoid Focal cross entropy loss as described in
// https://arxiv.org/abs/1708.02002
message SigmoidFocalClassificationLoss {
// DEPRECATED, do not use.
optional bool anchorwise_output = 1 [default = false];
// modulating factor for the loss.
optional float gamma = 2 [default = 2.0];
// alpha weighting factor for the loss.
optional float alpha = 3;
}
// Classification loss using a softmax function over class predictions.
message WeightedSoftmaxClassificationLoss {
// DEPRECATED, do not use.
// Output loss per anchor.
optional bool anchorwise_output = 1 [default=false];
// Scale logit (input) value before calculating softmax classification loss.
// Typically used for softmax distillation.
optional float logit_scale = 2 [default = 1.0];
}
// Classification loss using a softmax function over class predictions and
// a softmax function over the groundtruth labels (assumed to be logits).
message WeightedSoftmaxClassificationAgainstLogitsLoss {
// DEPRECATED, do not use.
optional bool anchorwise_output = 1 [default = false];
// Scale and softmax groundtruth logits before calculating softmax
// classification loss. Typically used for softmax distillation with teacher
// annotations stored as logits.
optional float logit_scale = 2 [default = 1.0];
}
// Classification loss using a sigmoid function over the class prediction with
// the highest prediction score.
message BootstrappedSigmoidClassificationLoss {
// Interpolation weight between 0 and 1.
optional float alpha = 1;
// Whether hard boot strapping should be used or not. If true, will only use
// one class favored by model. Othewise, will use all predicted class
// probabilities.
optional bool hard_bootstrap = 2 [default=false];
// DEPRECATED, do not use.
// Output loss per anchor.
optional bool anchorwise_output = 3 [default=false];
}
// Pixelwise logistic focal loss with pixels near the target having a reduced
// penalty.
message PenaltyReducedLogisticFocalLoss {
// Focussing parameter of the focal loss.
optional float alpha = 1;
// Penalty reduction factor.
optional float beta = 2;
}
// Configuration for hard example miner.
message HardExampleMiner {
// Maximum number of hard examples to be selected per image (prior to
// enforcing max negative to positive ratio constraint). If set to 0,
// all examples obtained after NMS are considered.
optional int32 num_hard_examples = 1 [default=64];
// Minimum intersection over union for an example to be discarded during NMS.
optional float iou_threshold = 2 [default=0.7];
// Whether to use classification losses ('cls', default), localization losses
// ('loc') or both losses ('both'). In the case of 'both', cls_loss_weight and
// loc_loss_weight are used to compute weighted sum of the two losses.
enum LossType {
BOTH = 0;
CLASSIFICATION = 1;
LOCALIZATION = 2;
}
optional LossType loss_type = 3 [default=BOTH];
// Maximum number of negatives to retain for each positive anchor. If
// num_negatives_per_positive is 0 no prespecified negative:positive ratio is
// enforced.
optional int32 max_negatives_per_positive = 4 [default=0];
// Minimum number of negative anchors to sample for a given image. Setting
// this to a positive number samples negatives in an image without any
// positive anchors and thus not bias the model towards having at least one
// detection per image.
optional int32 min_negatives_per_image = 5 [default=0];
}
// Configuration for random example sampler.
message RandomExampleSampler {
// The desired fraction of positive samples in batch when applying random
// example sampling.
optional float positive_sample_fraction = 1 [default = 0.01];
}