Fasciculus:Flag of Estonia.svg

Multi tool use
Summarium
|
The source code of this SVG is valid.
|
|
This flag was created with a text editor.
|
Previous version had been created with Inkscape (2 854 bytes) f now 10.58% of previous size
It is easy to put a border around this flag image :
|
 |
|
[[File:Flag of Estonia.svg|border|96px]]
|
Potestas usoris
Public domainPublic domainfalsefalse
|
 |
According to the Republic of Estonia Copyright Act (passed on November 11, 1992; consolidated text May 2006):
§ 5. Results of intellectual activities to which this Act does not apply
- 1) ideas, images, notions, theories, processes, systems, methods, concepts, principles, discoveries, inventions, and other results of intellectual activities which are described, explained or expressed in any other manner in a work;
- 2) works of folklore;
- 3) legislation and administrative documents (acts, decrees, regulations, statutes, instructions, directives) and official translations thereof;
- 4) court decisions and official translations thereof;
- 5) official symbols of the state and insignia of organisations (flags, coats of arms, orders, medals, badges, etc.);
- 6) news of the day;
- 7) facts and data;
- 8) ideas and principles which underlie any element of a computer program, including those which underlie its user interfaces.
Hence it is assumed that this image has been released into the public domain. However, in some instances the use of this image might be regulated by other laws.
Deutsch | English | Eesti | Italiano | Русский | Українська | +/−
|
|
It is easy to put a border around this flag image :
|
 |
|
[[File:Flag of Estonia.svg|border|96px]]
|
wC1C6zJ,J,6UcS27QfEa2BLGQ9 tSxG2l,sk7uv cPeUDSCiK766Ew,d86ibK,5U7T
Popular posts from this blog
Tabula multilinguis Rosettana in Museo Britannico ostenditur. Tabula Rosettana, [1] etiam titulo OGIS 90 agnita, est stela decreto de rebus sacris in Aegypto anno 196 a.C.n. lato inscripta. Tabula iuxta Rosettam Aegypti, urbem in delta Nili et ad oram maris Mediterranei iacentem, anno 1799 a milite Francico reperta est. Inventio stelae, linguis duabus scripturisque tribus inscriptae, eruditis Instituti Aegypti statim nuntiata est; ibi enim iussu imperatoris Napoleonis eruditi omnium scientiarum (sub aegide Commissionis Scientiarum et Artium) properaverant cum expeditione Francica. Qua a Britannis mox debellata, tabula Rosettana Londinium missa hodie apud Museum Britannicum iacet. Textus Graecus cito lectus interpretationi textuum Aegyptiorum (in formis hieroglyphica et demotica expressorum) gradatim adiuvit. Denique textum plene interpretatus est Ioannes Franciscus Champollion. Ab opere eruditorum cumulativo coepit hodiernus scripturae hieroglyphicae linguaeque Aegyptiae a...
1
$begingroup$
This is what I mean as document text image: I want to label the texts in image as separate blocks and my model should detect these labels as classes. NOTE: This is how the end result should be like: The labels like Block 1, Block 2, Block 3,.. should be Logo, Title, Date,.. Others, etc. Work done: First approach : I tried to implement this method via Object Detection, it didn't work. It didn't even detect any text. Second approach : Then I tried it using PixelLink. As this model is build for scene text detection, it detected each and every text in the image. But this method can detect multiple lines of text if the threshold values are increased. But I have no idea how do I add labels to the text blocks. PIXEL_CLS_WEIGHT_all_ones = 'PIXEL_CLS_WEIGHT_all_ones' PIXEL_C...
1
$begingroup$
I have this LSTM model model = Sequential() model.add(Masking(mask_value=0, input_shape=(timesteps, features))) model.add(LSTM(100, dropout=0.2, recurrent_dropout=0.2, return_sequences=False)) model.add(Dense(features, activation='softmax')) model.compile(loss='categorical_crossentropy', optimizer='adam', metrics=['accuracy']) and shapes X_train (21, 11, 5), y_train (21, 5) . Each timestep is represented by 5 features and return_sequences is set to False because I want to predict one 5D array (the next timestep) for each input sequence of 11 timesteps. I get the error ValueError: y_true and y_pred have different number of output (5!=1) If I reshape the data as X_train (21, 11, 5), y_train (21, 1, 5) instead I get the error ValueError: Inva...