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// This file is @generated by prost-build.
/// Prediction model parameters for Image Classification.
#[derive(Clone, Copy, PartialEq, ::prost::Message)]
pub struct ImageClassificationPredictionParams {
/// The Model only returns predictions with at least this confidence score.
/// Default value is 0.0
#[prost(float, tag = "1")]
pub confidence_threshold: f32,
/// The Model only returns up to that many top, by confidence score,
/// predictions per instance. If this number is very high, the Model may return
/// fewer predictions. Default value is 10.
#[prost(int32, tag = "2")]
pub max_predictions: i32,
}
/// Prediction model parameters for Video Action Recognition.
#[derive(Clone, Copy, PartialEq, ::prost::Message)]
pub struct VideoActionRecognitionPredictionParams {
/// The Model only returns predictions with at least this confidence score.
/// Default value is 0.0
#[prost(float, tag = "1")]
pub confidence_threshold: f32,
/// The model only returns up to that many top, by confidence score,
/// predictions per frame of the video. If this number is very high, the
/// Model may return fewer predictions per frame. Default value is 50.
#[prost(int32, tag = "2")]
pub max_predictions: i32,
}
/// Prediction model parameters for Image Object Detection.
#[derive(Clone, Copy, PartialEq, ::prost::Message)]
pub struct ImageObjectDetectionPredictionParams {
/// The Model only returns predictions with at least this confidence score.
/// Default value is 0.0
#[prost(float, tag = "1")]
pub confidence_threshold: f32,
/// The Model only returns up to that many top, by confidence score,
/// predictions per instance. Note that number of returned predictions is also
/// limited by metadata's predictionsLimit. Default value is 10.
#[prost(int32, tag = "2")]
pub max_predictions: i32,
}
/// Prediction model parameters for Video Classification.
#[derive(Clone, Copy, PartialEq, ::prost::Message)]
pub struct VideoClassificationPredictionParams {
/// The Model only returns predictions with at least this confidence score.
/// Default value is 0.0
#[prost(float, tag = "1")]
pub confidence_threshold: f32,
/// The Model only returns up to that many top, by confidence score,
/// predictions per instance. If this number is very high, the Model may return
/// fewer predictions. Default value is 10,000.
#[prost(int32, tag = "2")]
pub max_predictions: i32,
/// Set to true to request segment-level classification. Vertex AI returns
/// labels and their confidence scores for the entire time segment of the
/// video that user specified in the input instance.
/// Default value is true
#[prost(bool, tag = "3")]
pub segment_classification: bool,
/// Set to true to request shot-level classification. Vertex AI determines
/// the boundaries for each camera shot in the entire time segment of the
/// video that user specified in the input instance. Vertex AI then
/// returns labels and their confidence scores for each detected shot, along
/// with the start and end time of the shot.
/// WARNING: Model evaluation is not done for this classification type,
/// the quality of it depends on the training data, but there are no metrics
/// provided to describe that quality.
/// Default value is false
#[prost(bool, tag = "4")]
pub shot_classification: bool,
/// Set to true to request classification for a video at one-second intervals.
/// Vertex AI returns labels and their confidence scores for each second of
/// the entire time segment of the video that user specified in the input
/// WARNING: Model evaluation is not done for this classification type, the
/// quality of it depends on the training data, but there are no metrics
/// provided to describe that quality. Default value is false
#[prost(bool, tag = "5")]
pub one_sec_interval_classification: bool,
}
/// Prediction model parameters for Image Segmentation.
#[derive(Clone, Copy, PartialEq, ::prost::Message)]
pub struct ImageSegmentationPredictionParams {
/// When the model predicts category of pixels of the image, it will only
/// provide predictions for pixels that it is at least this much confident
/// about. All other pixels will be classified as background. Default value is
/// 0.5.
#[prost(float, tag = "1")]
pub confidence_threshold: f32,
}
/// Prediction model parameters for Video Object Tracking.
#[derive(Clone, Copy, PartialEq, ::prost::Message)]
pub struct VideoObjectTrackingPredictionParams {
/// The Model only returns predictions with at least this confidence score.
/// Default value is 0.0
#[prost(float, tag = "1")]
pub confidence_threshold: f32,
/// The model only returns up to that many top, by confidence score,
/// predictions per frame of the video. If this number is very high, the
/// Model may return fewer predictions per frame. Default value is 50.
#[prost(int32, tag = "2")]
pub max_predictions: i32,
/// Only bounding boxes with shortest edge at least that long as a relative
/// value of video frame size are returned. Default value is 0.0.
#[prost(float, tag = "3")]
pub min_bounding_box_size: f32,
}