Created
July 28, 2009 05:30
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| <?php | |
| // | |
| // This program is free software; you can redistribute it and/or | |
| // modify it under the terms of the GNU General Public License | |
| // as published by the Free Software Foundation; either version 2 | |
| // of the License, or (at your option) any later version. | |
| // | |
| // This program is distributed in the hope that it will be useful, | |
| // but WITHOUT ANY WARRANTY; without even the implied warranty of | |
| // MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the | |
| // GNU General Public License for more details. | |
| // | |
| // You should have received a copy of the GNU General Public License | |
| // along with this program; if not, write to the Free Software | |
| // Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301, USA. | |
| // | |
| // @Author Karthik Tharavaad | |
| // karthik_tharavaad@yahoo.com | |
| // @Contributor Maurice Svay | |
| // maurice@svay.Com | |
| class Face_Detector { | |
| protected $detection_data; | |
| protected $canvas; | |
| protected $face; | |
| private $reduced_canvas; | |
| public function __construct($detection_file = 'detection.dat') { | |
| if (is_file($detection_file)) { | |
| $this->detection_data = unserialize(file_get_contents($detection_file)); | |
| } else { | |
| throw new Exception("Couldn't load detection data"); | |
| } | |
| //$this->detection_data = json_decode(file_get_contents('data.js')); | |
| } | |
| public function face_detect($file) { | |
| if (!is_file($file)) { | |
| throw new Exception("Can not load $file"); | |
| } | |
| $this->canvas = imagecreatefromjpeg($file); | |
| $im_width = imagesx($this->canvas); | |
| $im_height = imagesy($this->canvas); | |
| //Resample before detection? | |
| $ratio = 0; | |
| $diff_width = 320 - $im_width; | |
| $diff_height = 240 - $im_height; | |
| if ($diff_width > $diff_height) { | |
| $ratio = $im_width / 320; | |
| } else { | |
| $ratio = $im_height / 240; | |
| } | |
| if ($ratio != 0) { | |
| $this->reduced_canvas = imagecreatetruecolor($im_width / $ratio, $im_height / $ratio); | |
| imagecopyresampled($this->reduced_canvas, $this->canvas, 0, 0, 0, 0, $im_width / $ratio, $im_height / $ratio, $im_width, $im_height); | |
| $stats = $this->get_img_stats($this->reduced_canvas); | |
| $this->face = $this->do_detect_greedy_big_to_small($stats['ii'], $stats['ii2'], $stats['width'], $stats['height']); | |
| $this->face['x'] *= $ratio; | |
| $this->face['y'] *= $ratio; | |
| $this->face['w'] *= $ratio; | |
| } else { | |
| $stats = $this->get_img_stats($this->canvas); | |
| $this->face = $this->do_detect_greedy_big_to_small($stats['ii'], $stats['ii2'], $stats['width'], $stats['height']); | |
| } | |
| return ($this->face['w'] > 0); | |
| } | |
| public function toJpeg() { | |
| $color = imagecolorallocate($this->canvas, 255, 0, 0); //red | |
| imagerectangle($this->canvas, $this->face['x'], $this->face['y'], $this->face['x']+$this->face['w'], $this->face['y']+ $this->face['w'], $color); | |
| header('Content-type: image/jpeg'); | |
| imagejpeg($this->canvas); | |
| } | |
| public function toJson() { | |
| return "{'x':" . $this->face['x'] . ", 'y':" . $this->face['y'] . ", 'w':" . $this->face['w'] . "}"; | |
| } | |
| public function getFace() { | |
| return $this->face; | |
| } | |
| protected function get_img_stats($canvas){ | |
| $image_width = imagesx($canvas); | |
| $image_height = imagesy($canvas); | |
| $iis = $this->compute_ii($canvas, $image_width, $image_height); | |
| return array( | |
| 'width' => $image_width, | |
| 'height' => $image_height, | |
| 'ii' => $iis['ii'], | |
| 'ii2' => $iis['ii2'] | |
| ); | |
| } | |
| protected function compute_ii($canvas, $image_width, $image_height ){ | |
| $ii_w = $image_width+1; | |
| $ii_h = $image_height+1; | |
| $ii = array(); | |
| $ii2 = array(); | |
| for($i=0; $i<$ii_w; $i++ ){ | |
| $ii[$i] = 0; | |
| $ii2[$i] = 0; | |
| } | |
| for($i=1; $i<$ii_w; $i++ ){ | |
| $ii[$i*$ii_w] = 0; | |
| $ii2[$i*$ii_w] = 0; | |
| $rowsum = 0; | |
| $rowsum2 = 0; | |
| for($j=1; $j<$ii_h; $j++ ){ | |
| $rgb = ImageColorAt($canvas, $j, $i); | |
| $red = ($rgb >> 16) & 0xFF; | |
| $green = ($rgb >> 8) & 0xFF; | |
| $blue = $rgb & 0xFF; | |
| $grey = ( 0.2989*$red + 0.587*$green + 0.114*$blue )>>0; // this is what matlab uses | |
| $rowsum += $grey; | |
| $rowsum2 += $grey*$grey; | |
| $ii_above = ($i-1)*$ii_w + $j; | |
| $ii_this = $i*$ii_w + $j; | |
| $ii[$ii_this] = $ii[$ii_above] + $rowsum; | |
| $ii2[$ii_this] = $ii2[$ii_above] + $rowsum2; | |
| } | |
| } | |
| return array('ii'=>$ii, 'ii2' => $ii2); | |
| } | |
| protected function do_detect_greedy_big_to_small( $ii, $ii2, $width, $height ){ | |
| $s_w = $width/20.0; | |
| $s_h = $height/20.0; | |
| $start_scale = $s_h < $s_w ? $s_h : $s_w; | |
| $scale_update = 1 / 1.2; | |
| for($scale = $start_scale; $scale > 1; $scale *= $scale_update ){ | |
| $w = (20*$scale) >> 0; | |
| $endx = $width - $w - 1; | |
| $endy = $height - $w - 1; | |
| $step = max( $scale, 2 ) >> 0; | |
| $inv_area = 1 / ($w*$w); | |
| for($y = 0; $y < $endy ; $y += $step ){ | |
| for($x = 0; $x < $endx ; $x += $step ){ | |
| $passed = $this->detect_on_sub_image( $x, $y, $scale, $ii, $ii2, $w, $width+1, $inv_area); | |
| if( $passed ) { | |
| return array('x'=>$x, 'y'=>$y, 'w'=>$w); | |
| } | |
| } // end x | |
| } // end y | |
| } // end scale | |
| return null; | |
| } | |
| protected function detect_on_sub_image( $x, $y, $scale, $ii, $ii2, $w, $iiw, $inv_area){ | |
| $mean = ( $ii[($y+$w)*$iiw + $x + $w] + $ii[$y*$iiw+$x] - $ii[($y+$w)*$iiw+$x] - $ii[$y*$iiw+$x+$w] )*$inv_area; | |
| $vnorm = ( $ii2[($y+$w)*$iiw + $x + $w] + $ii2[$y*$iiw+$x] - $ii2[($y+$w)*$iiw+$x] - $ii2[$y*$iiw+$x+$w] )*$inv_area - ($mean*$mean); | |
| $vnorm = $vnorm > 1 ? sqrt($vnorm) : 1; | |
| $passed = true; | |
| for($i_stage = 0; $i_stage < count($this->detection_data); $i_stage++ ){ | |
| $stage = $this->detection_data[$i_stage]; | |
| $trees = $stage[0]; | |
| $stage_thresh = $stage[1]; | |
| $stage_sum = 0; | |
| for($i_tree = 0; $i_tree < count($trees); $i_tree++ ){ | |
| $tree = $trees[$i_tree]; | |
| $current_node = $tree[0]; | |
| $tree_sum = 0; | |
| while( $current_node != null ){ | |
| $vals = $current_node[0]; | |
| $node_thresh = $vals[0]; | |
| $leftval = $vals[1]; | |
| $rightval = $vals[2]; | |
| $leftidx = $vals[3]; | |
| $rightidx = $vals[4]; | |
| $rects = $current_node[1]; | |
| $rect_sum = 0; | |
| for( $i_rect = 0; $i_rect < count($rects); $i_rect++ ){ | |
| $s = $scale; | |
| $rect = $rects[$i_rect]; | |
| $rx = ($rect[0]*$s+$x)>>0; | |
| $ry = ($rect[1]*$s+$y)>>0; | |
| $rw = ($rect[2]*$s)>>0; | |
| $rh = ($rect[3]*$s)>>0; | |
| $wt = $rect[4]; | |
| $r_sum = ( $ii[($ry+$rh)*$iiw + $rx + $rw] + $ii[$ry*$iiw+$rx] - $ii[($ry+$rh)*$iiw+$rx] - $ii[$ry*$iiw+$rx+$rw] )*$wt; | |
| $rect_sum += $r_sum; | |
| } | |
| $rect_sum *= $inv_area; | |
| $current_node = null; | |
| if( $rect_sum >= $node_thresh*$vnorm ){ | |
| if( $rightidx == -1 ) | |
| $tree_sum = $rightval; | |
| else | |
| $current_node = $tree[$rightidx]; | |
| } else { | |
| if( $leftidx == -1 ) | |
| $tree_sum = $leftval; | |
| else | |
| $current_node = $tree[$leftidx]; | |
| } | |
| } | |
| $stage_sum += $tree_sum; | |
| } | |
| if( $stage_sum < $stage_thresh ){ | |
| return false; | |
| } | |
| } | |
| return true; | |
| } | |
| } |
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