public override PointF MatchLocation(Fingerprint value, Match_Strategy strategy, double[] args)
 {
     switch(strategy)
     {
         case Match_Strategy.Single:
             {
                 double min_dist = double.MaxValue;
                 PointF best_loc = new PointF();
                 foreach (KeyValuePair<PointF, Fingerprint> kvp in this.loc_fingerprint_dict)
                 {
                     double dist = (kvp.Value as Fingerprint_S).CalcSimilarity(value as Fingerprint_S);
                     if (dist < min_dist)
                     {
                         min_dist = dist;
                         best_loc = kvp.Key;
                     }
                 }
                 return best_loc;
             }
         case Match_Strategy.KNN:
             {
                 if (args == null || args.Length < 1)
                     throw new Exception("KNN匹配方法需要额外一个参数");
                 Dictionary<PointF, double> dists = new Dictionary<PointF, double>();
                 foreach (KeyValuePair<PointF, Fingerprint> kvp in this.loc_fingerprint_dict)
                 {
                     double dist = (kvp.Value as Fingerprint_S).CalcSimilarity(value as Fingerprint_S);
                     dists[kvp.Key] = dist;
                 }
                 IOrderedEnumerable<KeyValuePair<PointF, double>> sorted = dists.OrderBy(x => x.Value);
                 int k = (int)args[0];
                 int i = 0;
                 KeyValuePair<PointF, double>[] NNs = new KeyValuePair<PointF, double>[k];
                 double sumr = 0;
                 foreach(KeyValuePair<PointF, double> kvp in sorted)
                 {
                     if (i >= k)
                         break;
                     NNs[i] = kvp;
                     sumr += 1 / kvp.Value;
                     i++;
                 }
                 double mean_x = 0;
                 double mean_y = 0;
                 foreach(KeyValuePair<PointF, double> kvp in NNs)
                 {
                     mean_x += kvp.Key.X * ((1 / kvp.Value) / sumr);
                     mean_y += kvp.Key.Y * ((1 / kvp.Value) / sumr);
                 }
                 return new PointF((float)mean_x, (float)mean_y);
             }
     }
     return new PointF();
 }
Exemple #2
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        //public override double CalcSimilarity(Fingerprint that)
        //{
        //    Fingerprint_S th = that as Fingerprint_S;
        //    if (this.fingerprint.Length != th.fingerprint.Length)
        //        return double.MaxValue;
        //    List<double> tmp_this = new List<double>();
        //    List<double> tmp_that = new List<double>();
        //    for (int i = 0; i < this.fingerprint.Length; i++)
        //    {
        //        tmp_this.Add(this.fingerprint[i].Strength);
        //        tmp_that.Add(th.fingerprint[i].Strength);
        //    }
        //    double[] this_s = tmp_this.ToArray();
        //    double[] that_s = tmp_that.ToArray();
        //    double r_s = new MathUtils.MathUtility().corrcoef(this_s, that_s);

        //    return 1 / (r_s + 1);
        //}

        public override double CalcSimilarity(Fingerprint that)
        {
            Fingerprint_S th = that as Fingerprint_S;
            if (this.fingerprint.Length != th.fingerprint.Length)
                return double.MaxValue;
            double s_rmse = 0;
            for (int i = 0; i < this.fingerprint.Length; i++)
            {
                s_rmse += Math.Pow(this.fingerprint[i].Strength - th.fingerprint[i].Strength, 2);
            }
            s_rmse = Math.Sqrt(s_rmse / this.fingerprint.Length);
            return s_rmse * 1e6;
        }
Exemple #3
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 public override Fingerprint Mean(Fingerprint[] prints)
 {
     int fp_len = prints.Length;
     int rec_len = (prints[0] as Fingerprint_S).fingerprint.Length;
     List<S> lst = new List<S>();
     for (int i = 0; i < rec_len; i++)
     {
         double sum_s = 0;
         foreach (Fingerprint_S print in prints)
         {
             sum_s += print.fingerprint[i].Strength;
         }
         lst.Add(new S(sum_s / fp_len));
     }
     return new Fingerprint_S(lst.ToArray());
 }
Exemple #4
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        private void GenerateFingerprintDataBase(object sender, DoWorkEventArgs e)
        {
            int avg_num = 5;
            object[] paras = (object[])e.Argument;
            int ray_num = (int)paras[0];
            Transmitter.EMIT_OPTION emit_option = (Transmitter.EMIT_OPTION)paras[1];
            Signal_Type signal_type = (Signal_Type)paras[2];
            Noise_Type noise_type = (Noise_Type)paras[3];
            double[] noise_params = (double[])paras[4];
            int sample_cnt = (int)paras[5];
            string file_name = (string)paras[6];

            int total_pt_num = this.viz_rps.Map.GridPoints.Length;

            Transmitter tr = null;
            foreach (Transmitter trans in this.viz_rps.Map.Transmitters)
                tr = trans;
            if(tr == null)
            {
                e.Result = false;
                MessageBox.Show("地图上需要设置一个信号源以作为数据库所用信号源的参数参考。");
                return;
            }

            Dictionary<PointF, Dictionary<Fingerprint_Name, Fingerprint>> dict = new Dictionary<PointF, Dictionary<Fingerprint_Name, Fingerprint>>();
            for(int i = 0; i < total_pt_num; i++)
            {
                int cnt = 0;
                this.viz_rps.Map.ClearTransmitters();
                Point loc = this.viz_rps.Map.GridPoints[i];
                tr.Location = loc;
                this.viz_rps.Map.AddTransmitter(tr);
                Dictionary<Fingerprint_Name, Fingerprint[]> fps = new Dictionary<Fingerprint_Name,Fingerprint[]>();
                for (int j = 0; j < Enum.GetNames(new Fingerprint_Name().GetType()).Length; j++)
                    fps[(Fingerprint_Name)j] = new Fingerprint[avg_num];
                while (cnt < avg_num)
                {
                    Dictionary<Fingerprint_Name, Fingerprint> tmp = this.viz_rps.Map.RunSingleSimulation(ray_num, emit_option, signal_type,
                                                            noise_type, noise_params, sample_cnt);
                    foreach (KeyValuePair<Fingerprint_Name, Fingerprint> kvp in tmp)
                        fps[kvp.Key][cnt] = kvp.Value;
                    cnt++;
                    this.bgwGenFDB.ReportProgress((int)((avg_num * i + cnt) / (double)(avg_num * total_pt_num) * 100));
                    System.Threading.Thread.Sleep(200);
                }

                Dictionary<Fingerprint_Name, Fingerprint> tmp_mean = new Dictionary<Fingerprint_Name, Fingerprint>();
                foreach (KeyValuePair<Fingerprint_Name, Fingerprint[]> kvp in fps)
                {
                    switch (kvp.Key)
                    {
                        case Fingerprint_Name.SA:
                            tmp_mean.Add(kvp.Key, new Fingerprint_SA().Mean(kvp.Value));
                            break;
                        case Fingerprint_Name.S:
                            tmp_mean.Add(kvp.Key, new Fingerprint_S().Mean(kvp.Value));;
                            break;
                        default:
                            tmp_mean.Add(kvp.Key, new Fingerprint().Mean(kvp.Value));;
                            break;
                    }  
                }
                dict.Add(loc, tmp_mean);
            }
            FingerprintDataBase fdb = new FingerprintDataBase(dict, this.viz_rps.Map);

            System.Runtime.Serialization.IFormatter formatter = new System.Runtime.Serialization.Formatters.Binary.BinaryFormatter();
            FileStream fs = new FileStream(file_name, FileMode.Create, FileAccess.Write, FileShare.None);
            formatter.Serialize(fs, fdb);
            fs.Close();
            e.Result = true;
        }
Exemple #5
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 /// <summary>
 /// 计算多个指纹的平均值
 /// </summary>
 /// <param name="prints"></param>
 /// <returns></returns>
 public virtual Fingerprint Mean(Fingerprint[] prints) { return null; }
Exemple #6
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 /// <summary>
 /// 计算与另一个指纹的相似度
 /// </summary>
 /// <param name="that"></param>
 /// <returns></returns>
 public virtual double CalcSimilarity(Fingerprint that) { return double.MaxValue; }
Exemple #7
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 /// <summary>
 /// 返回最匹配的位置坐标
 /// </summary>
 /// <param name="value"></param>
 public PointF MatchLocation(Fingerprint value, Match_Strategy strategy, double[] args) 
 {
     switch (strategy)
     {
         case Match_Strategy.Single:
             {
                 double min_dist = double.PositiveInfinity;
                 PointF best_loc = new PointF();
                 foreach (KeyValuePair<PointF, Dictionary<Fingerprint_Name, Fingerprint>> kvp in this.loc_fingerprint_dict)
                 {
                     double dist = double.PositiveInfinity;
                     switch(value.Name)
                     {
                         case Fingerprint_Name.SA:
                             dist = (kvp.Value[value.Name] as Fingerprint_SA).CalcSimilarity(value as Fingerprint_SA);
                             break;
                         case Fingerprint_Name.S:
                             dist = (kvp.Value[value.Name] as Fingerprint_S).CalcSimilarity(value as Fingerprint_S);
                             break;
                     }
                     if (dist < min_dist)
                     {
                         min_dist = dist;
                         best_loc = kvp.Key;
                     }
                 }
                 return best_loc;
             }
         case Match_Strategy.KNN:
             {
                 if (args == null || args.Length < 1)
                     throw new Exception("KNN匹配方法需要额外一个参数");
                 Dictionary<PointF, double> dists = new Dictionary<PointF, double>();
                 foreach (KeyValuePair<PointF, Dictionary<Fingerprint_Name, Fingerprint>> kvp in this.loc_fingerprint_dict)
                 {
                     double dist = double.PositiveInfinity;
                     switch(value.Name)
                     {
                         case Fingerprint_Name.SA:
                             dist = (kvp.Value[value.Name] as Fingerprint_SA).CalcSimilarity(value as Fingerprint_SA);
                             break;
                         case Fingerprint_Name.S:
                             dist = (kvp.Value[value.Name] as Fingerprint_S).CalcSimilarity(value as Fingerprint_S);
                             break;
                     }
                     dists[kvp.Key] = dist;
                 }
                 IOrderedEnumerable<KeyValuePair<PointF, double>> sorted = dists.OrderBy(x => x.Value);
                 int k = (int)args[0];
                 int i = 0;
                 KeyValuePair<PointF, double>[] NNs = new KeyValuePair<PointF, double>[k];
                 double sumr = 0;
                 foreach (KeyValuePair<PointF, double> kvp in sorted)
                 {
                     if (double.IsNaN(kvp.Value))
                         continue;
                     if (i >= k)
                         break;
                     NNs[i] = kvp;
                     sumr += 1 / kvp.Value;
                     i++;
                 }
                 double mean_x = 0;
                 double mean_y = 0;
                 foreach (KeyValuePair<PointF, double> kvp in NNs)
                 {
                     mean_x += kvp.Key.X * ((1 / kvp.Value) / sumr);
                     mean_y += kvp.Key.Y * ((1 / kvp.Value) / sumr);
                 }
                 return new PointF((float)mean_x, (float)mean_y);
             }
         case Match_Strategy.KNN_HC:
             {
                 if (args == null || args.Length < 1)
                     throw new Exception("KNN匹配方法需要额外一个参数");
                 Dictionary<PointF, double> dists = new Dictionary<PointF, double>();
                 foreach (KeyValuePair<PointF, Dictionary<Fingerprint_Name, Fingerprint>> kvp in this.loc_fingerprint_dict)
                 {
                     double dist = double.PositiveInfinity;
                     switch (value.Name)
                     {
                         case Fingerprint_Name.SA:
                             dist = (kvp.Value[value.Name] as Fingerprint_SA).CalcSimilarity(value as Fingerprint_SA);
                             break;
                         case Fingerprint_Name.S:
                             dist = (kvp.Value[value.Name] as Fingerprint_S).CalcSimilarity(value as Fingerprint_S);
                             break;
                     }
                     dists[kvp.Key] = dist;
                 }
                 IOrderedEnumerable<KeyValuePair<PointF, double>> sorted = dists.OrderBy(x => x.Value);
                 int k = (int)args[0];
                 int i = 0;
                 List<MathUtils.MathUtility.Cluster> clusters = new List<MathUtils.MathUtility.Cluster>();
                 Dictionary<PointF, double> NNs = new Dictionary<PointF,double>();
                 foreach (KeyValuePair<PointF, double> kvp in sorted)
                 {
                     if (double.IsNaN(kvp.Value))
                         continue;
                     if (i >= k)
                         break;
                     NNs.Add(kvp.Key, kvp.Value);
                     clusters.Add(new MathUtils.MathUtility.Cluster(new List<PointF>() { kvp.Key }));
                     i++;
                 }
                 new MathUtils.MathUtility().HierachicalClustering_InPlace(clusters, 2);
                 MathUtils.MathUtility.Cluster cluster = clusters.OrderByDescending(x => x.PointNum).First();
                 double sum_r = 0;
                 double wx_sum = 0;
                 double wy_sum = 0;
                 foreach(PointF pt in cluster.point_list)
                 {
                     sum_r += 1 / NNs[pt];
                     wx_sum += pt.X * 1 / NNs[pt];
                     wy_sum += pt.Y * 1 / NNs[pt];
                 }
                 return new PointF((float)(wx_sum / sum_r), (float)(wy_sum / sum_r));
             }
     }
     return new PointF();
 }
Exemple #8
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        //public override double CalcSimilarity(Fingerprint that)
        //{
        //    Fingerprint_SA th = that as Fingerprint_SA;
        //    if (this.fingerprint.Length != th.fingerprint.Length)
        //        return double.MaxValue;
        //    List<double> tmp_this = new List<double>();
        //    List<double> tmp_that = new List<double>();
        //    for (int i = 0; i < this.fingerprint.Length; i++)
        //    {
        //        tmp_this.Add(this.fingerprint[i].Strength);
        //        tmp_that.Add(th.fingerprint[i].Strength);
        //    }
        //    double[] this_s = tmp_this.ToArray();
        //    double[] that_s = tmp_that.ToArray();
        //    double r_s = new MathUtils.MathUtility().corrcoef(this_s, that_s);

        //    tmp_this.Clear();
        //    tmp_that.Clear();
        //    for (int i = 0; i < this.fingerprint.Length; i++)
        //    {
        //        tmp_this.Add(this.fingerprint[i].AOA / 180 * Math.PI);
        //        tmp_that.Add(th.fingerprint[i].AOA / 180 * Math.PI);
        //    }
        //    double[] this_a = tmp_this.ToArray();
        //    double[] that_a = tmp_that.ToArray();
        //    double r_a = new MathUtils.MathUtility().corrcoef(this_a, that_a);
        //    return 1 / ((r_s + r_a) / 2 + 1);
        //}

        //public override double CalcSimilarity(Fingerprint that)
        //{
        //    Fingerprint_SA th = that as Fingerprint_SA;
        //    if (this.fingerprint.Length != th.fingerprint.Length)
        //        return double.MaxValue;
        //    double s_rmse = 0;
        //    double aoa_rmse = 0;
        //    for (int i = 0; i < this.fingerprint.Length; i++)
        //    {
        //        s_rmse += Math.Pow(this.fingerprint[i].Strength - th.fingerprint[i].Strength, 2);
        //        aoa_rmse += Math.Pow(new MathUtils.MathUtility().diff_degree(this.fingerprint[i].AOA, th.fingerprint[i].AOA), 2);
        //    }
        //    s_rmse = Math.Sqrt(s_rmse / this.fingerprint.Length);
        //    aoa_rmse = Math.Sqrt(aoa_rmse / this.fingerprint.Length) / 180 * Math.PI;
        //    return s_rmse * 1e2 + aoa_rmse;
        //}

        public override double CalcSimilarity(Fingerprint that)
        {
            Fingerprint_SA th = that as Fingerprint_SA;
            if (this.fingerprint.Length != th.fingerprint.Length)
                return double.MaxValue;
            double total_s_this = 0;
            double total_s_that = 0;
            for (int i = 0; i < this.fingerprint.Length; i++)
            {
                total_s_this += this.fingerprint[i].Strength;
                total_s_that += th.fingerprint[i].Strength;
            }
            double rmse = 0;
            for (int i = 0; i < this.fingerprint.Length; i++)
            {
                double this_c = this.fingerprint[i].Strength * this.fingerprint[i].AOA / total_s_this;
                double that_c = th.fingerprint[i].Strength * th.fingerprint[i].AOA / total_s_that;
                rmse += Math.Pow(new MathUtils.MathUtility().diff_degree(this_c, that_c), 2);
            }
            rmse = Math.Sqrt(rmse / this.fingerprint.Length);
            return rmse;
        }
Exemple #9
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 public override Fingerprint Mean(Fingerprint[] prints)
 {
     int fp_len = prints.Length;
     int rec_len = (prints[0] as Fingerprint_SA).fingerprint.Length;
     List<SA> lst = new List<SA>();
     for (int i = 0; i < rec_len; i++)
     {
         double sum_s = 0;
         double sum_a = 0;
         foreach (Fingerprint_SA print in prints)
         {
             sum_s += print.fingerprint[i].Strength;
             sum_a += double.IsInfinity(print.fingerprint[i].AOA) ? 0 : print.fingerprint[i].AOA;
         }
         double mean_s = sum_s / fp_len;
         double mean_a = sum_a == 0 ? double.NegativeInfinity : sum_a / fp_len;
         lst.Add(new SA(mean_s, mean_a));
     }
     return new Fingerprint_SA(lst.ToArray());
 }