/****************************************************************************** ** Filename: cluster.h ** Purpose: Definition of feature space clustering routines ** Author: Dan Johnson ** ** (c) Copyright Hewlett-Packard Company, 1988. ** Licensed under the Apache License, Version 2.0 (the "License"); ** you may not use this file except in compliance with the License. ** You may obtain a copy of the License at ** http://www.apache.org/licenses/LICENSE-2.0 ** Unless required by applicable law or agreed to in writing, software ** distributed under the License is distributed on an "AS IS" BASIS, ** WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. ** See the License for the specific language governing permissions and ** limitations under the License. *****************************************************************************/ #ifndef CLUSTER_H #define CLUSTER_H #include "kdtree.h" #include "oldlist.h" struct BUCKETS; #define MINBUCKETS 5 #define MAXBUCKETS 39 /*---------------------------------------------------------------------- Types ----------------------------------------------------------------------*/ typedef struct sample { bool Clustered : 1; // true if included in a higher cluster bool Prototype : 1; // true if cluster represented by a proto unsigned SampleCount : 30; // number of samples in this cluster struct sample* Left; // ptr to left sub-cluster struct sample* Right; // ptr to right sub-cluster int32_t CharID; // identifier of char sample came from float Mean[1]; // mean of cluster - SampleSize floats } CLUSTER; using SAMPLE = CLUSTER; // can refer to as either sample or cluster typedef enum { spherical, elliptical, mixed, automatic } PROTOSTYLE; typedef struct { // parameters to control clustering PROTOSTYLE ProtoStyle; // specifies types of protos to be made float MinSamples; // min # of samples per proto - % of total float MaxIllegal; // max percentage of samples in a cluster which // have more than 1 feature in that cluster float Independence; // desired independence between dimensions double Confidence; // desired confidence in prototypes created int MagicSamples; // Ideal number of samples in a cluster. } CLUSTERCONFIG; typedef enum { normal, uniform, D_random, DISTRIBUTION_COUNT } DISTRIBUTION; typedef union { float Spherical; float* Elliptical; } FLOATUNION; typedef struct { bool Significant : 1; // true if prototype is significant bool Merged : 1; // Merged after clustering so do not output // but kept for display purposes. If it has no // samples then it was actually merged. // Otherwise it matched an already significant // cluster. unsigned Style : 2; // spherical, elliptical, or mixed unsigned NumSamples : 28; // number of samples in the cluster CLUSTER* Cluster; // ptr to cluster which made prototype DISTRIBUTION* Distrib; // different distribution for each dimension float* Mean; // prototype mean float TotalMagnitude; // total magnitude over all dimensions float LogMagnitude; // log base e of TotalMagnitude FLOATUNION Variance; // prototype variance FLOATUNION Magnitude; // magnitude of density function FLOATUNION Weight; // weight of density function } PROTOTYPE; typedef struct { int16_t SampleSize; // number of parameters per sample PARAM_DESC* ParamDesc; // description of each parameter int32_t NumberOfSamples; // total number of samples being clustered KDTREE* KDTree; // for optimal nearest neighbor searching CLUSTER* Root; // ptr to root cluster of cluster tree LIST ProtoList; // list of prototypes int32_t NumChar; // # of characters represented by samples // cache of reusable histograms by distribution type and number of buckets. BUCKETS* bucket_cache[DISTRIBUTION_COUNT][MAXBUCKETS + 1 - MINBUCKETS]; } CLUSTERER; typedef struct { int32_t NumSamples; // number of samples in list int32_t MaxNumSamples; // maximum size of list SAMPLE* Sample[1]; // array of ptrs to sample data structures } SAMPLELIST; // low level cluster tree analysis routines. #define InitSampleSearch(S, C) \ (((C) == nullptr) ? (S = NIL_LIST) : (S = push(NIL_LIST, (C)))) /*-------------------------------------------------------------------------- Public Function Prototypes --------------------------------------------------------------------------*/ CLUSTERER* MakeClusterer(int16_t SampleSize, const PARAM_DESC ParamDesc[]); SAMPLE* MakeSample(CLUSTERER* Clusterer, const float* Feature, int32_t CharID); LIST ClusterSamples(CLUSTERER* Clusterer, CLUSTERCONFIG* Config); void FreeClusterer(CLUSTERER* Clusterer); void FreeProtoList(LIST* ProtoList); void FreePrototype(void* arg); // PROTOTYPE *Prototype); CLUSTER* NextSample(LIST* SearchState); float Mean(PROTOTYPE* Proto, uint16_t Dimension); float StandardDeviation(PROTOTYPE* Proto, uint16_t Dimension); int32_t MergeClusters(int16_t N, PARAM_DESC ParamDesc[], int32_t n1, int32_t n2, float m[], float m1[], float m2[]); #endif