|
|
@@ -454,6 +454,7 @@ mlnet.ModelReader = class {
|
|
|
catalog.register('IidChangePointDetector', mlnet.IidChangePointDetector);
|
|
|
catalog.register('IidSpikeDetector', mlnet.IidSpikeDetector);
|
|
|
catalog.register('ImageClassificationTrans', mlnet.ImageClassificationTransformer);
|
|
|
+ catalog.register('ImageClassificationPred', mlnet.ImageClassificationModelParameters);
|
|
|
catalog.register('ImageLoaderTransform', mlnet.ImageLoadingTransformer);
|
|
|
catalog.register('ImageScalerTransform', mlnet.ImageResizingTransformer);
|
|
|
catalog.register('ImagePixelExtractor', mlnet.ImagePixelExtractingTransformer);
|
|
|
@@ -1169,6 +1170,24 @@ mlnet.ModelParametersBase = class {
|
|
|
}
|
|
|
};
|
|
|
|
|
|
+mlnet.ImageClassificationModelParameters = class extends mlnet.ModelParametersBase {
|
|
|
+
|
|
|
+ constructor(context) {
|
|
|
+ super(context);
|
|
|
+ const reader = context.reader;
|
|
|
+ this.classCount = reader.int32();
|
|
|
+ this.imagePreprocessorTensorInput = reader.string();
|
|
|
+ this.imagePreprocessorTensorOutput = reader.string();
|
|
|
+ this.graphInputTensor = reader.string();
|
|
|
+ this.graphOutputTensor = reader.string();
|
|
|
+ this.modelFile = 'TFModel';
|
|
|
+ // const modelBytes = context.openBinary('TFModel');
|
|
|
+ // first uint32 is size of TensorFlow model
|
|
|
+ // inputType = new VectorDataViewType(uint8);
|
|
|
+ // outputType = new VectorDataViewType(float32, classCount);
|
|
|
+ }
|
|
|
+};
|
|
|
+
|
|
|
mlnet.NaiveBayesMulticlassModelParameters = class extends mlnet.ModelParametersBase {
|
|
|
|
|
|
constructor(context) {
|
|
|
@@ -1834,6 +1853,9 @@ mlnet.OnnxTransformer = class extends mlnet.RowToRowTransformerBase {
|
|
|
constructor(context) {
|
|
|
super(context);
|
|
|
const reader = context.reader;
|
|
|
+ this.modelFile = 'OnnxModel';
|
|
|
+ // const modelBytes = context.openBinary('OnnxModel');
|
|
|
+ // first uint32 is size of .onnx model
|
|
|
const numInputs = context.modelVersionWritten > 0x00010001 ? reader.int32() : 1;
|
|
|
this.inputs = [];
|
|
|
for (let i = 0; i < numInputs; i++) {
|