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Issue 41503006: Add ToT WebGL conformance tests : part 8 (Closed) Base URL: svn://svn.chromium.org/chrome/trunk/deps/third_party/webgl/sdk/tests/
Patch Set: Created 7 years, 2 months ago
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Property Changes:
Added: svn:eol-style
## -0,0 +1 ##
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1 <!DOCTYPE html>
2 <html>
3 <head>
4 <meta charset="utf-8">
5 <!--
6
7 /*
8 ** Copyright (c) 2012 The Khronos Group Inc.
9 **
10 ** Permission is hereby granted, free of charge, to any person obtaining a
11 ** copy of this software and/or associated documentation files (the
12 ** "Materials"), to deal in the Materials without restriction, including
13 ** without limitation the rights to use, copy, modify, merge, publish,
14 ** distribute, sublicense, and/or sell copies of the Materials, and to
15 ** permit persons to whom the Materials are furnished to do so, subject to
16 ** the following conditions:
17 **
18 ** The above copyright notice and this permission notice shall be included
19 ** in all copies or substantial portions of the Materials.
20 **
21 ** THE MATERIALS ARE PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND,
22 ** EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF
23 ** MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT.
24 ** IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY
25 ** CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT,
26 ** TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE
27 ** MATERIALS OR THE USE OR OTHER DEALINGS IN THE MATERIALS.
28 */
29
30 -->
31
32 <link rel="stylesheet" type="text/css" href="../unit.css" />
33 <script type="application/x-javascript" src="../unit.js"></script>
34 <script type="application/x-javascript" src="../util.js"></script>
35 <script type="application/x-javascript">
36
37 Tests.autorun = false;
38 Tests.message = "This might take a second or two. Take the upload numbers with a dose of salt, as there's no drawing code using the data.";
39
40 Tests.startUnit = function () {
41 var canvas = document.getElementById('gl');
42 var gl = getGLContext(canvas);
43 return [gl];
44 }
45
46 Tests.testTexImage2D = function(gl) {
47 var tex = gl.createTexture();
48 var texArr = new Array(256*256*4);
49 var bufData = new Array(256*256*4);
50 for (var i=0; i<texArr.length; i++) texArr[i] = 0;
51 for (var i=0; i<bufData.length; i++) bufData[i] = 0.5;
52 gl.bindTexture(gl.TEXTURE_2D, tex);
53 time("texImage2D", function() {
54 for (var i=0; i<100; i++)
55 gl.texImage2D(gl.TEXTURE_2D, 0, gl.RGBA, 256, 256, 0, gl.RGBA, gl.UN SIGNED_BYTE, texArr);
56 });
57 time("texImage2D", function() {
58 for (var i=0; i<100; i++)
59 gl.texImage2D(gl.TEXTURE_2D, 0, gl.RGBA, 256, 256, 0, gl.RGBA, gl.UN SIGNED_BYTE, texArr);
60 });
61 time("texSubImage2D", function() {
62 for (var i=0; i<100; i++)
63 gl.texSubImage2D(gl.TEXTURE_2D, 0, 0, 0, 256, 256, gl.RGBA, gl.UNSIG NED_BYTE, texArr);
64 });
65 var img = document.getElementById('logo');
66 time("texImage2DHTML", function() {
67 for (var i=0; i<100; i++)
68 gl.texImage2D(gl.TEXTURE_2D, 0, gl.RGBA, gl.RGBA, gl.UNSIGNED_BYTE, img);
69 });
70 time("texSubImage2DHTML", function() {
71 for (var i=0; i<100; i++)
72 gl.texSubImage2D(gl.TEXTURE_2D, 0, 0, 0, gl.RGBA, gl.UNSIGNED_BYTE, img);
73 });
74 var bufs = [gl.createBuffer(), gl.createBuffer()];
75 var buf = bufs[0], buf2 = bufs[1];
76 gl.bindBuffer(gl.ARRAY_BUFFER, buf);
77 var bufArr = new Float32Array(bufData);
78 time("bufferDataNoChange", function() {
79 for (var i=0; i<100; i++)
80 gl.bufferData(gl.ARRAY_BUFFER, bufArr, gl.STATIC_DRAW);
81 });
82 time("bufferSubDataNoChange", function() {
83 for (var i=0; i<100; i++)
84 gl.bufferSubData(gl.ARRAY_BUFFER, 0, bufArr);
85 });
86 time("bufferData", function() {
87 var bufArr = new Float32Array(bufData);
88 for (var i=0; i<25; i++)
89 gl.bufferData(gl.ARRAY_BUFFER, bufArr, gl.STATIC_DRAW);
90 });
91 time("bufferSubData", function() {
92 var bufArr = new Float32Array(bufData);
93 for (var i=0; i<25; i++)
94 gl.bufferSubData(gl.ARRAY_BUFFER, 0, bufArr);
95 });
96 var sh = new Shader(gl, 'vert-v', 'frag-v');
97 gl.disable(gl.DEPTH_TEST);
98 sh.use();
99 var v = sh.attrib('Vertex');
100 for (var i=0; i<16; i++)
101 gl.disableVertexAttribArray(i);
102 gl.enableVertexAttribArray(v);
103 gl.vertexAttribPointer(v, 4, gl.FLOAT, false, 0, 0);
104 time("verticeDraw", function() {
105 for (var i=0; i<100; i++)
106 gl.drawArrays(gl.TRIANGLES, 0, 256*256);
107 gl.readPixels(0,0,1,1,gl.RGBA, gl.UNSIGNED_BYTE);
108 });
109 gl.bindBuffer(gl.ARRAY_BUFFER, buf2);
110 gl.bufferData(gl.ARRAY_BUFFER, bufArr, gl.STATIC_DRAW);
111 time("verticeDrawC", function() {
112 for (var i=0; i<100; i++) {
113 gl.bindBuffer(gl.ARRAY_BUFFER, (i % 2 == 0) ? buf : buf2);
114 gl.drawArrays(gl.TRIANGLES, 0, 256*256);
115 }
116 gl.readPixels(0,0,1,1,gl.RGBA, gl.UNSIGNED_BYTE);
117 });
118 // Drawing arrays with vertexAttribPointer seems to have been removed from W ebGL.
119 /* gl.bindBuffer(gl.ARRAY_BUFFER, null);
120 gl.vertexAttribPointer(v, 4, gl.FLOAT, false, 0, bufArr);
121 time("verticeDrawVA", function() {
122 for (var i=0; i<100; i++)
123 gl.drawArrays(gl.TRIANGLES, 0, 256*256);
124 gl.readPixels(0,0,1,1,gl.RGBA, gl.UNSIGNED_BYTE);
125 });
126 time("verticeDrawVAC", function() {
127 for (var i=0; i<100; i++) {
128 gl.vertexAttribPointer(v, 4, gl.FLOAT, false, 0, bufArr);
129 gl.drawArrays(gl.TRIANGLES, 0, 256*256);
130 }
131 gl.readPixels(0,0,1,1,gl.RGBA, gl.UNSIGNED_BYTE);
132 });*/
133 sh.destroy();
134 sh = new Filter(gl, 'vert-t', 'frag-t');
135 sh.apply();
136 time("textureDraw", function() {
137 for (var i=0; i<1000; i++)
138 gl.drawArrays(gl.TRIANGLES, 0, 6);
139 gl.readPixels(0,0,1,1,gl.RGBA, gl.UNSIGNED_BYTE);
140 });
141 sh.destroy();
142 time("readPixels", function() {
143 for (var i=0; i<100; i++)
144 gl.readPixels(0, 0, 256, 256, gl.RGBA, gl.UNSIGNED_BYTE);
145 });
146 time("getImageData", function() {
147 for (var i=0; i<100; i++)
148 gl.getImageData(0, 0, 256, 256);
149 });
150 gl.bindTexture(gl.TEXTURE_2D, null);
151 gl.bindBuffer(gl.ARRAY_BUFFER, null);
152 bufs.forEach(function(buf){ gl.deleteBuffer(buf) });
153 gl.deleteTexture(tex);
154 }
155
156
157 Tests.endUnit = function(gl) {
158 }
159
160 </script>
161 <script id="vert-v" type="x-shader/x-vertex">
162
163 attribute vec4 Vertex;
164 void main()
165 {
166 gl_Position = Vertex;
167 }
168 </script>
169 <script id="frag-v" type="x-shader/x-fragment">
170
171 precision mediump float;
172
173 void main()
174 {
175 gl_FragColor = vec4(1.0, 0.0, 0.0, 1.0);
176 }
177 </script>
178 <script id="vert-t" type="x-shader/x-vertex">
179
180
181 attribute vec3 Vertex;
182 attribute vec2 Tex;
183 varying vec2 texCoord0;
184 void main()
185 {
186 gl_Position = vec4(Vertex, 1.0);
187 texCoord0 = Tex;
188 }
189 </script>
190 <script id="frag-t" type="x-shader/x-fragment">
191
192 precision mediump float;
193
194 uniform sampler2D Texture;
195
196 varying vec2 texCoord0;
197 void main()
198 {
199 gl_FragColor = texture2D(Texture, texCoord0);
200 }
201 </script>
202
203 <style>canvas{ position:absolute; }
204 img{ display:none; }</style>
205 </head><body>
206 <h3>100x 256x256x4 texture upload with texImage2D (26.2MB total)</h3>
207 <p id="texImage2D"></p>
208 <h3>100x 256x256x4 texture upload with texSubImage2D (26.2MB total)</h3>
209 <p id="texSubImage2D"></p>
210 <h3>100x 256x256x4 texture upload with texImage2DHTML (26.2MB total)</h3>
211 <p id="texImage2DHTML"></p>
212 <h3>100x 256x256x4 texture upload with texSubImage2DHTML (26.2MB total)</h3>
213 <p id="texSubImage2DHTML"></p>
214 <h3>100x 256x256x4 readPixels (26.2MB total)</h3>
215 <p id="readPixels"></p>
216 <h3>100x 256x256x4 getImageData (26.2MB total)</h3>
217 <p id="getImageData"></p>
218 <h3>25x 256x256x4 float bufferData (6.6MB total)</h3>
219 <p id="bufferData"></p>
220 <h3>25x 256x256x4 float bufferSubData (6.6MB total)</h3>
221 <p id="bufferSubData"></p>
222 <h3>100x 256x256x4 float bufferData, reuse Float32Array (26.2MB total)</h3>
223 <p id="bufferDataNoChange"></p>
224 <h3>100x 256x256x4 float bufferSubData, reuse Float32Array (26.2MB total)</h3>
225 <p id="bufferSubDataNoChange"></p>
226 <h3>100x 256x256 vert VBO draw</h3>
227 <p id="verticeDraw"></p>
228 <h3>100x 256x256 vert VBO draw, change VBO after each draw</h3>
229 <p id="verticeDrawC"></p>
230 <!--<h3>100x 256x256 vert vertex array draw</h3>
231 <p id="verticeDrawVA"></p>
232 <h3>100x 256x256 vert vertex array draw, change array after each draw</h3>
233 <p id="verticeDrawVAC"></p>-->
234 <h3>1000x 256x256 texture draw</h3>
235 <p id="textureDraw"></p>
236 <canvas id="gl" width="256" height="256"></canvas>
237 <img id="logo" src="data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAQAAAAEACAYAAA BccqhmAAAgAElEQVR4nO19bWiUZ9b/+BJfsP8oJfXlyUMDNkSSfnvGhgh2Qak6IPRZJ9QPtTIlYMQ2RQ vWHagSxcgiCYTtulsCCinb1mWfriy20pSnLkL1Q2Fqv5RktThhaxseWFGXFQbZdc//w8y55lznPtfLfc 99J6OZCw73PTOZSYz5/c7vvFznSkFjNVZjzduVmusfoLEaq7HmbjUIoLEaax6vBgE0VmPN49UggMZqrH m8GgTQWI01j1eDABqrsebxahBAYzXWPF4NAmisxprHq0EAjdVY83g1CKCxGmserwYBPKarWJyGs2c/hT ff/BjefPNjWL/tV7A7ewRWtQwoS6X61dVk9OtXtQzA0x1H1Wf9fP/78OabH8PZs5/C5OQklEqluf5nN1 bMq0EAdbxmZmZg4otvFcApsOfKKEm8+ebHMPHFt3Dv3r25/lU1VsTVIIA6Wffu3VNgf7rjqB/Q1x6E1N qD8HTHUVjccxoW95yGRb2/haaBP8DSX3wKy0/8GZaNXoNlo9fg/330F/h/H/0F/nPi/+A/J/5PPb/8xJ 9h+Yk/w7MHPoTU6x/Bot7fqs/Cz0+tPehFDA1SePxWgwDmYJVKJbh37x68f+Z/4Of733eDvQLy1I4RBW 4ELwKZAp3fI/ip/efE/4nP0/fwz1t+4s/QNPAHSGV+A2vSv4RU59vO0OLn+9+Hs2c/bRBCna4GAcziKh QK8OabH5fBY/PqnW8rT44empoJ/Cbgo9enZgM+vV9+4s8aCXDDnyn1+kewuOd0magMhLAm/Ut4/8z/wM QX3zbyCXWyGgSQ4CqVSjDxxbd2L7/2YFluv/4RLP3Fp5otP/FndfUlARvoTSTAVYJJAdiM/3xLf/EppD 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