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com.intel.analytics.zoo.models.image.objectdetection.ssd

SSDDataSet

Related Doc: package ssd

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object SSDDataSet

SSD Dataset accession

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  12. def loadSSDTrainSet(folder: String, sc: SparkContext, resolution: Int, batchSize: Int, parNum: Option[Int]): FeatureSet[SSDMiniBatch]

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    Load train data from sequence file and do transformation before SSD training

    Load train data from sequence file and do transformation before SSD training

    folder

    sequence file folder

    sc

    spark context

    resolution

    target resolution

    batchSize

    batch size for training

    parNum

    partition number

    returns

    distributec featureset for SSD training

  13. def loadSSDValSet(folder: String, sc: SparkContext, resolution: Int, batchSize: Int, parNum: Option[Int]): FeatureSet[SSDMiniBatch]

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    Load validation data from sequence file and do transformation before SSD validation

    Load validation data from sequence file and do transformation before SSD validation

    folder

    sequence file folder

    sc

    spark context

    resolution

    target resolution

    batchSize

    batch size for validation

    parNum

    partition number

    returns

    distributec featureset for SSD validation

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