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authorGeorg Holzmann <grholzi@users.sourceforge.net>2007-01-05 16:44:32 +0000
committerGeorg Holzmann <grholzi@users.sourceforge.net>2007-01-05 16:44:32 +0000
commit3fa36292c85af3eda0a221e5f86c13a6d85c8d1b (patch)
tree9ad7b3333887ac49cddad22cdef8c06524562800 /pix_linNN/help-pix_linNN.pd
parent4fd362a04c61f1a8e97c9742372469513ec11ce2 (diff)
new help file standard
svn path=/trunk/externals/grh/; revision=7216
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-#N canvas 871 74 498 738 10;
-#X obj 28 237 gemwin;
-#X msg 28 211 create \, 1;
-#N canvas 463 0 765 790 pix2sig_stuff~ 0;
-#X obj 120 35 gemhead;
-#X obj 120 132 pix_texture;
-#X obj 119 274 outlet~;
-#X obj 139 185 square 4;
-#X obj 139 163 separator;
-#X obj 61 165 separator;
-#X obj 120 101 pix_video;
-#X msg 186 64 dimen 640 480;
-#X obj 26 36 block~ 2048;
-#X msg 186 38 dimen 320 240;
-#X msg 76 535 getprecision;
-#X msg 93 696 getlearnrate;
-#X msg 65 671 learnrate 0.2;
-#X msg 424 459 getneurons;
-#X msg 404 206 train;
-#X obj 31 227 inlet~;
-#X msg 65 647 learnrate 0.05;
-#X text 296 49 <- input dimension;
-#X msg 76 498 precision \$1;
-#X floatatom 76 481 5 0 0 0 - - -;
-#X text 42 335 precision:;
-#X text 53 358 1: means every pixel is used in calculation;
-#X text 53 372 2: only every second pixel;
-#X text 53 386 ...;
-#X obj 62 411 loadbang;
-#X msg 407 401 neurons 2048;
-#X msg 407 422 neurons 64;
-#X text 403 336 neurons:;
-#X text 416 357 nr. of neurons used in the calculation;
-#X text 415 370 (_MUST_ be the same as the buffersize !!!);
-#X text 43 615 learnrate:;
-#X msg 62 456 precision 1;
-#X msg 62 436 precision 4;
-#X text 397 126 train:;
-#X text 417 152 trains the neural net;
-#X text 418 166 (the current video frame to;
-#X text 425 178 the current audio block);
-#X obj 61 252 pix_linNN;
-#X text 346 592 save/load;
-#X text 359 614 saves/load the actual trained net to/from a file;
-#X msg 440 684 load net.dat;
-#X msg 440 664 save net.dat;
-#X obj 78 226 r \$0-linNN;
-#X obj 404 233 s \$0-linNN;
-#X obj 62 564 s \$0-linNN;
-#X obj 407 492 s \$0-linNN;
-#X obj 65 725 s \$0-linNN;
-#X obj 440 723 s \$0-linNN;
-#X connect 0 0 6 0;
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-#X connect 1 0 5 0;
-#X connect 4 0 3 0;
-#X connect 5 0 37 0;
-#X connect 6 0 1 0;
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-#X connect 9 0 6 0;
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-#X connect 14 0 43 0;
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-#X connect 37 1 2 0;
-#X connect 40 0 47 0;
-#X connect 41 0 47 0;
-#X connect 42 0 37 0;
-#X restore 87 492 pd pix2sig_stuff~;
-#X msg 102 212 0 \, destroy;
-#X obj 114 537 unsig~;
-#X obj 204 382 osc~ 440;
-#X obj 203 406 *~;
-#X obj 235 406 tgl 15 0 empty empty empty 0 -6 0 8 -262144 -1 -1 0
-1;
-#X obj 205 446 sig~ 0;
-#X floatatom 115 558 8 0 0 0 - - -;
-#X text 199 230 <- create gemwin;
-#X obj 39 392 readsf~;
-#X obj 39 351 openpanel;
-#X msg 39 371 open \$1;
-#X obj 39 330 bng 15 250 50 0 empty empty empty 0 -6 0 8 -262144 -1
--1;
-#X text 65 329 <- load sample for training;
-#X obj 120 367 tgl 25 0 empty empty empty 0 -6 0 8 -195568 -1 -1 0
-1;
-#X floatatom 204 364 5 0 0 0 - - -;
-#X text 270 381 <- simple osc for training;
-#X text 260 447 <- to train silence;
-#X obj 83 413 bng 15 250 50 0 empty empty empty 0 -6 0 8 -262144 -1
--1;
-#X text 214 491 <- audio/video work;
-#X obj 88 634 dac~;
-#X obj 88 609 *~;
-#X obj 116 609 dbtorms;
-#X floatatom 116 591 5 0 0 0 - - -;
-#X text 166 588 <- outvol in dB;
-#X text 110 703 Georg Holzmann <grh@mur.at> \, 2004;
-#X text 24 23 pix_linNN:;
-#X text 22 58 (see also pix_recNN !!!);
-#X text 24 90 pix_linNN~ calculates an audio signal out of a video
-frame with a linear neural network \, which can be trained.;
-#X text 24 124 The network has one neuron per audio sample: this neuron
-has three inputs (a RGB-signal) \, a weight vector for each of the
-inputs \, a bias value and a linear output function.;
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