123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327 |
- <!DOCTYPE html>
- <html>
- <head>
- <meta charset="utf-8">
- <title>Pose Estimation Example</title>
- <link href="js_example_style.css" rel="stylesheet" type="text/css" />
- </head>
- <body>
- <h2>Pose Estimation Example</h2>
- <p>
- This tutorial shows you how to write an pose estimation example with OpenCV.js.<br>
- To try the example you should click the <b>modelFile</b> button(and <b>configInput</b> button if needed) to upload inference model.
- You can find the model URLs and parameters in the <a href="#appendix">model info</a> section.
- Then You should change the parameters in the first code snippet according to the uploaded model.
- Finally click <b>Try it</b> button to see the result. You can choose any other images.<br>
- </p>
- <div class="control"><button id="tryIt" disabled>Try it</button></div>
- <div>
- <table cellpadding="0" cellspacing="0" width="0" border="0">
- <tr>
- <td>
- <canvas id="canvasInput" width="400" height="250"></canvas>
- </td>
- <td>
- <canvas id="canvasOutput" style="visibility: hidden;" width="400" height="250"></canvas>
- </td>
- </tr>
- <tr>
- <td>
- <div class="caption">
- canvasInput <input type="file" id="fileInput" name="file" accept="image/*">
- </div>
- </td>
- <td>
- <p id='status' align="left"></p>
- </td>
- </tr>
- <tr>
- <td>
- <div class="caption">
- modelFile <input type="file" id="modelFile" name="file">
- </div>
- </td>
- </tr>
- <tr>
- <td>
- <div class="caption">
- configFile <input type="file" id="configFile">
- </div>
- </td>
- </tr>
- </table>
- </div>
- <div>
- <p class="err" id="errorMessage"></p>
- </div>
- <div>
- <h3>Help function</h3>
- <p>1.The parameters for model inference which you can modify to investigate more models.</p>
- <textarea class="code" rows="9" cols="100" id="codeEditor" spellcheck="false"></textarea>
- <p>2.Main loop in which will read the image from canvas and do inference once.</p>
- <textarea class="code" rows="15" cols="100" id="codeEditor1" spellcheck="false"></textarea>
- <p>3.Get blob from image as input for net, and standardize it with <b>mean</b> and <b>std</b>.</p>
- <textarea class="code" rows="17" cols="100" id="codeEditor2" spellcheck="false"></textarea>
- <p>4.Fetch model file and save to emscripten file system once click the input button.</p>
- <textarea class="code" rows="17" cols="100" id="codeEditor3" spellcheck="false"></textarea>
- <p>5.The pairs of keypoints of different dataset.</p>
- <textarea class="code" rows="30" cols="100" id="codeEditor4" spellcheck="false"></textarea>
- <p>6.The post-processing, including get the predicted points and draw lines into the image.</p>
- <textarea class="code" rows="30" cols="100" id="codeEditor5" spellcheck="false"></textarea>
- </div>
- <div id="appendix">
- <h2>Model Info:</h2>
- </div>
- <script src="utils.js" type="text/javascript"></script>
- <script src="js_dnn_example_helper.js" type="text/javascript"></script>
- <script id="codeSnippet" type="text/code-snippet">
- inputSize = [368, 368];
- mean = [0, 0, 0];
- std = 0.00392;
- swapRB = false;
- threshold = 0.1;
- // the pairs of keypoint, can be "COCO", "MPI" and "BODY_25"
- dataset = "COCO";
- </script>
- <script id="codeSnippet1" type="text/code-snippet">
- main = async function() {
- const input = getBlobFromImage(inputSize, mean, std, swapRB, 'canvasInput');
- let net = cv.readNet(configPath, modelPath);
- net.setInput(input);
- const start = performance.now();
- const result = net.forward();
- const time = performance.now()-start;
- const output = postProcess(result);
- updateResult(output, time);
- input.delete();
- net.delete();
- result.delete();
- }
- </script>
- <script id="codeSnippet4" type="text/code-snippet">
- BODY_PARTS = {};
- POSE_PAIRS = [];
- if (dataset === 'COCO') {
- BODY_PARTS = { "Nose": 0, "Neck": 1, "RShoulder": 2, "RElbow": 3, "RWrist": 4,
- "LShoulder": 5, "LElbow": 6, "LWrist": 7, "RHip": 8, "RKnee": 9,
- "RAnkle": 10, "LHip": 11, "LKnee": 12, "LAnkle": 13, "REye": 14,
- "LEye": 15, "REar": 16, "LEar": 17, "Background": 18 };
- POSE_PAIRS = [ ["Neck", "RShoulder"], ["Neck", "LShoulder"], ["RShoulder", "RElbow"],
- ["RElbow", "RWrist"], ["LShoulder", "LElbow"], ["LElbow", "LWrist"],
- ["Neck", "RHip"], ["RHip", "RKnee"], ["RKnee", "RAnkle"], ["Neck", "LHip"],
- ["LHip", "LKnee"], ["LKnee", "LAnkle"], ["Neck", "Nose"], ["Nose", "REye"],
- ["REye", "REar"], ["Nose", "LEye"], ["LEye", "LEar"] ]
- } else if (dataset === 'MPI') {
- BODY_PARTS = { "Head": 0, "Neck": 1, "RShoulder": 2, "RElbow": 3, "RWrist": 4,
- "LShoulder": 5, "LElbow": 6, "LWrist": 7, "RHip": 8, "RKnee": 9,
- "RAnkle": 10, "LHip": 11, "LKnee": 12, "LAnkle": 13, "Chest": 14,
- "Background": 15 }
- POSE_PAIRS = [ ["Head", "Neck"], ["Neck", "RShoulder"], ["RShoulder", "RElbow"],
- ["RElbow", "RWrist"], ["Neck", "LShoulder"], ["LShoulder", "LElbow"],
- ["LElbow", "LWrist"], ["Neck", "Chest"], ["Chest", "RHip"], ["RHip", "RKnee"],
- ["RKnee", "RAnkle"], ["Chest", "LHip"], ["LHip", "LKnee"], ["LKnee", "LAnkle"] ]
- } else if (dataset === 'BODY_25') {
- BODY_PARTS = { "Nose": 0, "Neck": 1, "RShoulder": 2, "RElbow": 3, "RWrist": 4,
- "LShoulder": 5, "LElbow": 6, "LWrist": 7, "MidHip": 8, "RHip": 9,
- "RKnee": 10, "RAnkle": 11, "LHip": 12, "LKnee": 13, "LAnkle": 14,
- "REye": 15, "LEye": 16, "REar": 17, "LEar": 18, "LBigToe": 19,
- "LSmallToe": 20, "LHeel": 21, "RBigToe": 22, "RSmallToe": 23,
- "RHeel": 24, "Background": 25 }
- POSE_PAIRS = [ ["Neck", "Nose"], ["Neck", "RShoulder"],
- ["Neck", "LShoulder"], ["RShoulder", "RElbow"],
- ["RElbow", "RWrist"], ["LShoulder", "LElbow"],
- ["LElbow", "LWrist"], ["Nose", "REye"],
- ["REye", "REar"], ["Neck", "LEye"],
- ["LEye", "LEar"], ["Neck", "MidHip"],
- ["MidHip", "RHip"], ["RHip", "RKnee"],
- ["RKnee", "RAnkle"], ["RAnkle", "RBigToe"],
- ["RBigToe", "RSmallToe"], ["RAnkle", "RHeel"],
- ["MidHip", "LHip"], ["LHip", "LKnee"],
- ["LKnee", "LAnkle"], ["LAnkle", "LBigToe"],
- ["LBigToe", "LSmallToe"], ["LAnkle", "LHeel"] ]
- }
- </script>
- <script id="codeSnippet5" type="text/code-snippet">
- postProcess = function(result) {
- const resultData = result.data32F;
- const matSize = result.matSize;
- const size1 = matSize[1];
- const size2 = matSize[2];
- const size3 = matSize[3];
- const mapSize = size2 * size3;
- let canvasOutput = document.getElementById('canvasOutput');
- const outputWidth = canvasOutput.width;
- const outputHeight = canvasOutput.height;
- let image = cv.imread("canvasInput");
- let output = new cv.Mat(outputWidth, outputHeight, cv.CV_8UC3);
- cv.cvtColor(image, output, cv.COLOR_RGBA2RGB);
- // get position of keypoints from output
- let points = [];
- for (let i = 0; i < Object.keys(BODY_PARTS).length; ++i) {
- heatMap = resultData.slice(i*mapSize, (i+1)*mapSize);
- let maxIndex = 0;
- let maxConf = heatMap[0];
- for (index in heatMap) {
- if (heatMap[index] > heatMap[maxIndex]) {
- maxIndex = index;
- maxConf = heatMap[index];
- }
- }
- if (maxConf > threshold) {
- indexX = maxIndex % size3;
- indexY = maxIndex / size3;
- x = outputWidth * indexX / size3;
- y = outputHeight * indexY / size2;
- points[i] = [Math.round(x), Math.round(y)];
- }
- }
- // draw the points and lines into the image
- for (pair of POSE_PAIRS) {
- partFrom = pair[0];
- partTo = pair[1];
- idFrom = BODY_PARTS[partFrom];
- idTo = BODY_PARTS[partTo];
- pointFrom = points[idFrom];
- pointTo = points[idTo];
- if (points[idFrom] && points[idTo]) {
- cv.line(output, new cv.Point(pointFrom[0], pointFrom[1]),
- new cv.Point(pointTo[0], pointTo[1]), new cv.Scalar(0, 255, 0), 3);
- cv.ellipse(output, new cv.Point(pointFrom[0], pointFrom[1]), new cv.Size(3, 3), 0, 0, 360,
- new cv.Scalar(0, 0, 255), cv.FILLED);
- cv.ellipse(output, new cv.Point(pointTo[0], pointTo[1]), new cv.Size(3, 3), 0, 0, 360,
- new cv.Scalar(0, 0, 255), cv.FILLED);
- }
- }
- return output;
- }
- </script>
- <script type="text/javascript">
- let jsonUrl = "js_pose_estimation_model_info.json";
- drawInfoTable(jsonUrl, 'appendix');
- let utils = new Utils('errorMessage');
- utils.loadCode('codeSnippet', 'codeEditor');
- utils.loadCode('codeSnippet1', 'codeEditor1');
- let getBlobFromImageCode = 'getBlobFromImage = ' + getBlobFromImage.toString();
- document.getElementById('codeEditor2').value = getBlobFromImageCode;
- let loadModelCode = 'loadModel = ' + loadModel.toString();
- document.getElementById('codeEditor3').value = loadModelCode;
- utils.loadCode('codeSnippet4', 'codeEditor4');
- utils.loadCode('codeSnippet5', 'codeEditor5');
- let canvas = document.getElementById('canvasInput');
- let ctx = canvas.getContext('2d');
- let img = new Image();
- img.crossOrigin = 'anonymous';
- img.src = 'roi.jpg';
- img.onload = function() {
- ctx.drawImage(img, 0, 0, canvas.width, canvas.height);
- };
- let tryIt = document.getElementById('tryIt');
- tryIt.addEventListener('click', () => {
- initStatus();
- document.getElementById('status').innerHTML = 'Running function main()...';
- utils.executeCode('codeEditor');
- utils.executeCode('codeEditor1');
- if (modelPath === "") {
- document.getElementById('status').innerHTML = 'Runing failed.';
- utils.printError('Please upload model file by clicking the button first.');
- } else {
- setTimeout(main, 1);
- }
- });
- let fileInput = document.getElementById('fileInput');
- fileInput.addEventListener('change', (e) => {
- initStatus();
- loadImageToCanvas(e, 'canvasInput');
- });
- let configPath = "";
- let configFile = document.getElementById('configFile');
- configFile.addEventListener('change', async (e) => {
- initStatus();
- configPath = await loadModel(e);
- document.getElementById('status').innerHTML = `The config file '${configPath}' is created successfully.`;
- });
- let modelPath = "";
- let modelFile = document.getElementById('modelFile');
- modelFile.addEventListener('change', async (e) => {
- initStatus();
- modelPath = await loadModel(e);
- document.getElementById('status').innerHTML = `The model file '${modelPath}' is created successfully.`;
- configPath = "";
- configFile.value = "";
- });
- utils.loadOpenCv(() => {
- tryIt.removeAttribute('disabled');
- });
- var main = async function() {};
- var postProcess = function(result) {};
- utils.executeCode('codeEditor');
- utils.executeCode('codeEditor1');
- utils.executeCode('codeEditor2');
- utils.executeCode('codeEditor3');
- utils.executeCode('codeEditor4');
- utils.executeCode('codeEditor5');
- function updateResult(output, time) {
- try{
- let canvasOutput = document.getElementById('canvasOutput');
- canvasOutput.style.visibility = "visible";
- let resized = new cv.Mat(canvasOutput.width, canvasOutput.height, cv.CV_8UC4);
- cv.resize(output, resized, new cv.Size(canvasOutput.width, canvasOutput.height));
- cv.imshow('canvasOutput', resized);
- document.getElementById('status').innerHTML = `<b>Model:</b> ${modelPath}<br>
- <b>Inference time:</b> ${time.toFixed(2)} ms`;
- } catch(e) {
- console.log(e);
- }
- }
- function initStatus() {
- document.getElementById('status').innerHTML = '';
- document.getElementById('canvasOutput').style.visibility = "hidden";
- utils.clearError();
- }
- </script>
- </body>
- </html>
|