"Index exceeds the number of array elements" in YoloV2ObjectDetector detect function.
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After running the following code, I complete the training for the YOLOV2 and obtain the detector object. When I try to use the detector, I obtain the following compile error:
THIS IS FOR RELEASE R2020a despite saying R2019b. R2020a is not a available option in drop down menu.
Index exceeds the number of array elements (2).
Error in yolov2ObjectDetector>iPredictUsingFeatureMap (line 868)
featureMap = reshape(featureMap,gridSize(1)*gridSize(2),gridSize(3),1,[]);
Error in yolov2ObjectDetector>iPostProcessActivations (line 982)
outputPrediction = iPredictUsingFeatureMap(featureMap, params.Threshold, info.PreprocessedImageSize,
anchorBoxes, params.FractionDownsampling, params.WH2HW);
Error in yolov2ObjectDetector>iPredictUsingDatastore (line 931)
iPostProcessActivations(fmap, batchInfo{ii}, anchorBoxes, params);
Error in yolov2ObjectDetector/detect (line 397)
varargout{1} = iPredictUsingDatastore(ds, this.Network, params, anchors, layerName);
Please help, thanks in advance.
%train set
imdsTrain = imageDatastore(table1{:,'imagefilename'},'ReadFcn',@fitsread);
bldsTrain = boxLabelDatastore(traintbl);
trainData = combine(imdsTrain, bldsTrain);
imdsTest = imageDatastore(table2{:,'imagefilename'},'ReadFcn',@fitsread);
bldsTest = boxLabelDatastore(testtbl);
testData = combine(imdsTest, bldsTest);
layers = [
imageInputLayer([2560 2560],"Name","imageinput")
convolution2dLayer([40 40],48,"Name","conv_1","Padding","same","Stride",[7 7])
batchNormalizationLayer("Name","batchnorm_1")
reluLayer("Name","relu_1")
maxPooling2dLayer([2 2],"Name","maxpool_1","Padding","same","Stride",[2 2])
convolution2dLayer([25 25],128,"Name","conv_2","Padding","same","Stride",[5 5])
batchNormalizationLayer("Name","batchnorm_2")
reluLayer("Name","relu_2")
convolution2dLayer([15 15],128,"Name","conv_4","Padding","same","Stride",[4 4])
batchNormalizationLayer("Name","batchnorm_4")
reluLayer("Name","relu_4")
maxPooling2dLayer([2 2],"Name",'maxpool_2',"Padding","same",'stride',[2 2])
convolution2dLayer([9 9],128,"Name","conv_6","Padding","same","Stride",[3 3])
batchNormalizationLayer("Name","batchnorm_6")
reluLayer("Name","relu_6")
convolution2dLayer([9 9],128,"Name","conv_5","Padding","same","Stride",[3 3])
batchNormalizationLayer("Name","batchnorm_5")
reluLayer("Name","relu_5")
maxPooling2dLayer([2 2],"Name","maxpool_3","Padding","same",'stride',[2 2])
convolution2dLayer([7 7],128,"Name","conv_9","Padding","same","Stride",[2 2])
batchNormalizationLayer("Name","batchnorm_9")
reluLayer("Name","relu_9")
convolution2dLayer([7 7],128,"Name","conv_8","Padding","same","Stride",[2 2])
batchNormalizationLayer("Name","batchnorm_8")
reluLayer("Name","relu_8")];
lgraph_homemade=layerGraph(layers);
%%%%%%%%%%make our own yolo from resnet50
numAnchors = 7;
[anchorBoxes,~] = estimateAnchorBoxes(trainData,numAnchors);
featureLayer = 'relu_8';
inputSize = [2560 2560];
numClasses = 1;
lgraph2 = yolov2Layers(inputSize,numClasses,anchorBoxes,lgraph_homemade,featureLayer);
options = trainingOptions('adam',...
'InitialLearnRate',0.005,...
'LearnRateSchedule','piecewise', ...
'LearnRateDropFactor',0.5, ...
'LearnRateDropPeriod',1, ...
'Verbose',true,...
'MiniBatchSize',8,...
'MaxEpochs',4,...
'Shuffle','never',...
'VerboseFrequency',1);
[detector,info] = trainYOLOv2ObjectDetector(trainData,lgraph2,options);
res=detect(detector,testData)
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