1 | % * This code was used in the following articles:
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2 | % * [1] Learning 3-D Scene Structure from a Single Still Image,
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3 | % * Ashutosh Saxena, Min Sun, Andrew Y. Ng,
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4 | % * In ICCV workshop on 3D Representation for Recognition (3dRR-07), 2007.
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5 | % * (best paper)
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6 | % * [2] 3-D Reconstruction from Sparse Views using Monocular Vision,
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7 | % * Ashutosh Saxena, Min Sun, Andrew Y. Ng,
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8 | % * In ICCV workshop on Virtual Representations and Modeling
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9 | % * of Large-scale environments (VRML), 2007.
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10 | % * [3] 3-D Depth Reconstruction from a Single Still Image,
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11 | % * Ashutosh Saxena, Sung H. Chung, Andrew Y. Ng.
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12 | % * International Journal of Computer Vision (IJCV), Aug 2007.
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13 | % * [6] Learning Depth from Single Monocular Images,
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14 | % * Ashutosh Saxena, Sung H. Chung, Andrew Y. Ng.
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15 | % * In Neural Information Processing Systems (NIPS) 18, 2005.
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16 | % *
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17 | % * These articles are available at:
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18 | % * http://make3d.stanford.edu/publications
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19 | % *
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20 | % * We request that you cite the papers [1], [3] and [6] in any of
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21 | % * your reports that uses this code.
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22 | % * Further, if you use the code in image3dstiching/ (multiple image version),
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23 | % * then please cite [2].
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24 | % *
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25 | % * If you use the code in third_party/, then PLEASE CITE and follow the
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26 | % * LICENSE OF THE CORRESPONDING THIRD PARTY CODE.
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27 | % *
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28 | % * Finally, this code is for non-commercial use only. For further
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29 | % * information and to obtain a copy of the license, see
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30 | % *
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31 | % * http://make3d.stanford.edu/publications/code
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32 | % *
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33 | % * Also, the software distributed under the License is distributed on an
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34 | % * "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either
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35 | % * express or implied. See the License for the specific language governing
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36 | % * permissions and limitations under the License.
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37 | % *
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38 | % */
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39 | function [] = RunCompleteMRF(BatchNu,LearnType,LearnSkyEx,LearnLog,LearnNear,... |
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40 | LearnAlg,baseline,step); |
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41 | |
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42 | % selected image with low error as train data set |
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43 | global GeneralDataFolder ScratchDataFolder LocalFolder ClusterExecutionDirectory... |
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44 | ImgFolder VertYNuPatch VertYNuDepth HoriXNuPatch HoriXNuDepth a_default b_default Ox_default Oy_default... |
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45 | Horizon_default filename batchSize NuRow_default SegVertYSize SegHoriXSize WeiBatchSize PopUpVertY PopUpHoriX taskName; |
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46 | |
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47 | if nargin < 8 |
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48 | step = [3]; |
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49 | end |
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50 | %load([ScratchDataFolder '/../MinTest/data/MinTestFileName.mat']); |
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51 | %load([ScratchDataFolder '/../MinTest/data/MaskGSky.mat']); |
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52 | load([ScratchDataFolder '/data/MaskGSky.mat']); |
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53 | previoslyStored = false; |
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54 | MultiScaleSup = true; |
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55 | learned = true; |
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56 | %PicsInd = [10:16 18 54:62]; |
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57 | PicsInd = 1:size(filename,2); |
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58 | %BatchSize = 5; |
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59 | BatchSize = 1; |
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60 | NuPics = size(filename,2); |
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61 | BatchRow = 1:BatchSize:NuPics; |
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62 | STNeeded = false |
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63 | %for i = 1:NuPics |
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64 | for i = BatchRow(BatchNu):min(BatchRow(BatchNu)+BatchSize-1,NuPics) |
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65 | % i |
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66 | PicsinfoName = strrep(filename{i},'img','picsinfo'); |
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67 | temp = dir([GeneralDataFolder '/PicsInfo/' PicsinfoName '.mat']); |
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68 | if size(temp,1) == 0 |
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69 | a = a_default; |
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70 | b = b_default; |
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71 | Ox = Ox_default; |
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72 | Oy = Oy_default; |
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73 | Horizon = Horizon_default; |
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74 | else |
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75 | load([GeneralDataFolder '/PicsInfo/' PicsinfoName '.mat']); |
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76 | end |
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77 | |
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78 | load([ScratchDataFolder '/data/CleanSup/CleanSup' num2str(PicsInd(i)) '.mat']); |
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79 | [SegVertYSize, SegHoriXSize] = size(MedSup); |
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80 | MedSup = double(MedSup); |
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81 | Sup = double(Sup); |
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82 | |
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83 | % load |
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84 | depthfile = strrep(filename{i},'img','depth_learned'); % the depth filename |
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85 | if baseline == 1 |
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86 | DepthFolder = [ LearnType '_' LearnAlg ... |
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87 | '_Nonsky' num2str(LearnSkyEx) '_Log' num2str(LearnLog) ... |
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88 | '_Near' num2str(LearnNear) '_baseline']; |
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89 | load([ScratchDataFolder '/' DepthFolder '/' depthfile '.mat']); |
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90 | depthMap = depthMap_base; |
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91 | elseif baseline ==2 |
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92 | DepthFolder = [ LearnType '_' LearnAlg ... |
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93 | '_Nonsky' num2str(LearnSkyEx) '_Log' num2str(LearnLog) ... |
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94 | '_Near' num2str(LearnNear) '_baseline2']; |
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95 | load([ScratchDataFolder '/' DepthFolder '/' depthfile '.mat']); |
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96 | depthMap = depthMap_base2; |
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97 | else |
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98 | DepthFolder = [ LearnType '_' LearnAlg ... |
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99 | '_Nonsky' num2str(LearnSkyEx) '_Log' num2str(LearnLog) ... |
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100 | '_Near' num2str(LearnNear)]; |
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101 | load([ScratchDataFolder '/' DepthFolder '/' depthfile '.mat']); |
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102 | end |
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103 | LearnedDepth = depthMap; clear depthMap; |
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104 | if ~learned |
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105 | depthfile = strrep(filename{i},'img','depth_sph_corr'); % the depth filename |
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106 | load([ScratchDataFolder '/Gridlaserdata/' depthfile '.mat']); |
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107 | LaserDepth = Position3DGrid(:,:,4); |
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108 | clear Position3DGrid; |
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109 | end |
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110 | |
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111 | % load Var |
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112 | Varfile = strrep(filename{i},'img','Var_learned'); % the depth filename |
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113 | load([ScratchDataFolder '/Var_' LearnType '_' LearnAlg '_Nonsky' num2str(LearnSkyEx) '_Log' num2str(LearnLog) ... |
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114 | '_Near' num2str(LearnNear) '/' Varfile '.mat']); |
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115 | % Posi3D = Ray.*repmat(permute(LaserDepth,[3 1 2]),[3 1]); |
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116 | |
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117 | % initalize the ray |
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118 | RayPorjectImgMapY = repmat((1:SegVertYSize)',[1 SegHoriXSize]); |
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119 | RayPorjectImgMapX = repmat((1:SegHoriXSize),[SegVertYSize 1]); |
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120 | RayPorjectImgMapY = ((SegVertYSize+1-RayPorjectImgMapY)-0.5)/SegVertYSize - Oy; |
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121 | RayPorjectImgMapX = (RayPorjectImgMapX-0.5)/SegHoriXSize - Ox; |
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122 | MedRay = RayImPosition(RayPorjectImgMapY,RayPorjectImgMapX,a,b,Ox,Oy); %[ horiXSizeLowREs VertYSizeLowREs 3] |
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123 | MedRay = permute(MedRay,[3 1 2]); |
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124 | |
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125 | RayPorjectImgMapY = repmat((1:VertYNuDepth)',[1 HoriXNuDepth]); |
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126 | RayPorjectImgMapX = repmat((1:HoriXNuDepth),[VertYNuDepth 1]); |
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127 | RayProjImgCo = cat(3, RayPorjectImgMapX, RayPorjectImgMapY); |
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128 | RayProjImgCo = permute(RayProjImgCo,[3 1 2]); |
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129 | RayProjImgCo = Matrix2ImgCo(HoriXNuDepth, VertYNuDepth, RayProjImgCo(:,:)'); |
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130 | RayProjImgCo = ImgCo2Matrix(SegHoriXSize, SegVertYSize, RayProjImgCo); |
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131 | RayProjImgCo = reshape(RayProjImgCo', 2, VertYNuDepth, []); |
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132 | RayPorjectImgMapY = ((VertYNuDepth+1-RayPorjectImgMapY)-0.5)/VertYNuDepth - Oy; |
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133 | RayPorjectImgMapX = (RayPorjectImgMapX-0.5)/HoriXNuDepth - Ox; |
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134 | RayOri = RayImPosition(RayPorjectImgMapY,RayPorjectImgMapX,a,b,Ox,Oy); %[ horiXSizeLowREs VertYSizeLowREs 3] |
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135 | RayOri = permute(RayOri,[3 1 2]); |
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136 | |
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137 | % edge detection on the boundary of MedSup |
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138 | boundary = conv2(MedSup,[1 -1],'same')~=0 | conv2(MedSup,[1; -1],'same')~=0; |
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139 | boundary([1 2 end-1 end],:) = 0; |
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140 | boundary(:,[1 2 end-1 end]) = 0; |
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141 | % [seglist]=edgeSegDetection(boundary,i,1); |
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142 | Img = imread([GeneralDataFolder '/' ImgFolder '/' filename{i} '.jpg'],'jpg'); |
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143 | Img = imresize(Img, [ SegVertYSize SegHoriXSize]); |
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144 | [seglist]=edgeSegDetection(Img,i,0); |
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145 | DisplaySup(MedSup,300); |
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146 | hold on; drawseg(seglist,300); |
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147 | % saveas(300,[ScratchDataFolder '/data/segImg.jpg'],'jpg'); |
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148 | HBrokeBook = zeros(VertYNuDepth, HoriXNuDepth); |
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149 | VBrokeBook = zeros(VertYNuDepth, HoriXNuDepth); |
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150 | MovedPatchBook = []; |
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151 | % [Sup, MedSup, RayProjImgCo, MovedPatchBook, HBrokeBook, VBrokeBook, StraightLineTable, OccluList] = GenStraightLineFlexibleStick(... |
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152 | % seglist,MedSup,Sup, RayProjImgCo, LearnedDepth, [], [], [], Ox, Oy, a , b); |
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153 | if STNeeded |
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154 | [Sup, MedSup, RayProjImgCo, MovedPatchBook, HBrokeBook, VBrokeBook, StraightLineTable, OccluList] = GenStraightLineFlexibleStickMedSup(... |
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155 | seglist,MedSup,Sup, RayProjImgCo, LearnedDepth, [], HBrokeBook, VBrokeBook, Ox, Oy, a , b); |
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156 | save([ScratchDataFolder '/data/RayProjImgCo/RayProjImgCo' num2str(i) '.mat'],'RayProjImgCo','seglist','Img','Sup','MedSup','boundary'); |
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157 | HBrokeBook(:,end) = []; |
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158 | VBrokeBook(end,:) = []; |
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159 | RayPorjectImgMapY = ((SegVertYSize+1-permute(RayProjImgCo(2,:,:),[2 3 1]))-0.5)/SegVertYSize - Oy; |
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160 | RayPorjectImgMapX = (permute(RayProjImgCo(1,:,:),[2 3 1])-0.5)/SegHoriXSize - Ox; |
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161 | Ray = RayImPosition(RayPorjectImgMapY,RayPorjectImgMapX,a,b,Ox,Oy); %[ horiXSizeLowREs VertYSizeLowREs 3] |
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162 | Ray = permute(Ray,[3 1 2]); |
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163 | else |
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164 | HBrokeBook(:,end) = []; |
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165 | VBrokeBook(end,:) = []; |
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166 | OccluList = []; |
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167 | StraightLineTable =[]; |
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168 | Ray = RayOri; |
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169 | end |
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170 | %return; |
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171 | % Multiple segmentation |
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172 | if MultiScaleSup ==1 |
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173 | load([ScratchDataFolder '/data/DiffLowResImgIndexSuperpixelSep.mat']); |
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174 | load([ScratchDataFolder '/data/TextLowResImgIndexSuperpixelSepi' num2str(BatchNu) '.mat']); |
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175 | DiffSup = DiffLowResImgIndexSuperpixelSep(PicsInd(i),end); clear DiffLowResImgIndexSuperpixelSep; |
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176 | TextSup = TextLowResImgIndexSuperpixelSep(PicsInd(i),:,2:end); clear TextLowResImgIndexSuperpixelSep; |
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177 | |
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178 | [MultiScaleSupTable] = MultiScalAnalyze( Sup, permute( cat( 3, DiffSup{1,1},... |
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179 | TextSup{1,1,1}, TextSup{1,1,2},... |
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180 | TextSup{1,2,1}, TextSup{1,2,2},... |
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181 | TextSup{1,3,1}, TextSup{1,3,2},... |
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182 | TextSup{1,4,1}, TextSup{1,4,2},... |
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183 | TextSup{1,5,1}, TextSup{1,5,2},... |
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184 | TextSup{1,6,1}, TextSup{1,6,2}),... |
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185 | [3 1 2])); |
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186 | else |
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187 | MultiScaleSupTable = []; |
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188 | end |
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189 | |
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190 | % load([ScratchDataFolder '/data/temp/List' num2str(i) '.mat']); |
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191 | if learned |
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192 | % OccluList = [ 17 18;17 37; 17 97; 17 67; 17 93; 17 266]; |
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193 | % FitPlaneLearnDepthCoPlane(Sup,MedSup,LearnedDepth, RayOri, Ray, MedRay,... |
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194 | % FitPlaneLearnDepthCoPlaneWOPreFit(Sup,MedSup,LearnedDepth, RayOri, Ray, MedRay,... |
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195 | ReportPlaneParaMRFNoSedumi(step, DepthFolder, Sup,MedSup,LearnedDepth, VarMap, RayOri, Ray, MedRay,... |
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196 | maskSky{PicsInd(i)},maskg{PicsInd(i)},'cvx_allL1Norm',i,... |
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197 | [], OccluList, MultiScaleSupTable, StraightLineTable, HBrokeBook, VBrokeBook,previoslyStored, baseline); |
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198 | %ReportPlaneParaMRF(step, DepthFolder, Sup,MedSup,LearnedDepth, VarMap, RayOri, Ray, MedRay,... |
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199 | % maskSky{PicsInd(i)},maskg{PicsInd(i)},'cvx_allL1Norm',i,... |
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200 | % [], OccluList, MultiScaleSupTable, StraightLineTable, HBrokeBook, VBrokeBook,previoslyStored, baseline); |
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201 | else |
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202 | FitPlaneLaserData_CoPlane(Sup,MedSup,LaserDepth,Ray, MedRay, maskSky{PicsInd(i)},maskg{PicsInd(i)},'cvx_allL1Norm',i,CornerList, CornerList ,previoslyStored); |
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203 | end |
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204 | end |
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