// Prepare input data for prediction.
        public static void PreparePredictor(ref NetworkContainer container, ref ImageNetworkPredictSettings settings)
        {
            TestForErrors(ref settings);

            EncogWrapper.LoadNetworkFromFS(ref container, settings.trainedNetwork);

            List <ICSVFilter> baseFilters = new List <ICSVFilter>(1);
            ICSVFilter        quaternions = new CSVEvenColumnFilter();

            baseFilters.Add(quaternions);

            // Setup loader.
            CSVLoaderSettings CSVSettings = new CSVLoaderSettings
            {
                filePath = settings.predictData,
                trimUp   = 1,
                trimDown = 0,
                filters  = baseFilters
            };

            var data = CSVLoader <Vector3> .LoadData(ref CSVSettings);

            // Initialize image Transformer.
            ImageTransformerSettings imageSettings = new ImageTransformerSettings
            {
                focusJoints = (LeapMotionJoint[])Enum.GetValues(typeof(LeapMotionJoint)),
                samples     = data,
                size        = settings.imgSize
            };
            ImageTransformer imageTransformer = new ImageTransformer();


            if (settings.predictSettings.threshold.Equals(null))
            {
                settings.predictSettings = new EncogPredictSettings
                {
                    threshold = 0.9
                };
            }

            settings.predictSettings.data = imageTransformer.GetNeuralInput(imageSettings);

            if (settings.predictSettings.data.Length != container.network.InputCount)
            {
                throw new NoNetworkMatchException("Sample count doesn't match network input count.");
            }
        }
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        public static void PreparePredictor(ref NetworkContainer container, ref CountNetworkPredictSettings settings)
        {
            TestForErrors(ref settings);

            EncogWrapper.LoadNetworkFromFS(ref container, settings.trainedNetwork);

            List <ICSVFilter> baseFilters = new List <ICSVFilter>(1);
            ICSVFilter        quaternions = new CSVEvenColumnFilter();

            baseFilters.Add(quaternions);

            // Setup loader.
            CSVLoaderSettings CSVSettings = new CSVLoaderSettings
            {
                filePath = settings.predictData,
                trimUp   = 1,
                trimDown = 0,
                filters  = baseFilters
            };

            var data = CSVLoader <Vector3> .LoadData(ref CSVSettings);

            // Initialize CountBased Transformer settings.
            IntervalBasedTransformerSettings countSettings = new IntervalBasedTransformerSettings
            {
                sampleList = data,
                count      = settings.sampleCount
            };
            CountBasedTransformer countTransformer = new CountBasedTransformer();

            if (settings.predictSettings.threshold.Equals(null))
            {
                settings.predictSettings = new EncogPredictSettings
                {
                    threshold = 0.9
                };
            }

            settings.predictSettings.data = countTransformer.GetNeuralInput(countSettings);

            if (settings.predictSettings.data.Length != container.network.InputCount)
            {
                throw new NoNetworkMatchException("Sample count doesn't match network input count.");
            }
        }