Next.js website for Rocky Mountain Vending company featuring: - Product catalog with Stripe integration - Service areas and parts pages - Admin dashboard with Clerk authentication - SEO optimized pages with JSON-LD structured data Co-authored-by: Cursor <cursoragent@cursor.com>
143 lines
6.6 KiB
Text
143 lines
6.6 KiB
Text
/**
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* @preserve
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* Copyright 2015 Igor Bezkrovny
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* All rights reserved. (MIT Licensed)
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*
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* ssim.ts - part of Image Quantization Library
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*/
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/**
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* - Original TypeScript implementation:
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* https://github.com/igor-bezkrovny/image-quantization/blob/9f62764ac047c3e53accdf1d7e4e424b0ef2fb60/src/quality/ssim.ts
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* - Based on Java implementation: https://github.com/rhys-e/structural-similarity
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* - For more information see: http://en.wikipedia.org/wiki/Structural_similarity
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*/
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var ImageSSIM;
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(function (ImageSSIM) {
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'use strict';
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/**
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* Grey = 1, GreyAlpha = 2, RGB = 3, RGBAlpha = 4
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*/
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(function (Channels) {
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Channels[Channels["Grey"] = 1] = "Grey";
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Channels[Channels["GreyAlpha"] = 2] = "GreyAlpha";
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Channels[Channels["RGB"] = 3] = "RGB";
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Channels[Channels["RGBAlpha"] = 4] = "RGBAlpha";
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})(ImageSSIM.Channels || (ImageSSIM.Channels = {}));
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var Channels = ImageSSIM.Channels;
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/**
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* Entry point.
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* @throws new Error('Images have different sizes!')
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*/
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function compare(image1, image2, windowSize, K1, K2, luminance, bitsPerComponent) {
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if (windowSize === void 0) { windowSize = 8; }
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if (K1 === void 0) { K1 = 0.01; }
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if (K2 === void 0) { K2 = 0.03; }
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if (luminance === void 0) { luminance = true; }
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if (bitsPerComponent === void 0) { bitsPerComponent = 8; }
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if (image1.width !== image2.width || image1.height !== image2.height) {
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throw new Error('Images have different sizes!');
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}
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/* tslint:disable:no-bitwise */
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var L = (1 << bitsPerComponent) - 1;
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/* tslint:enable:no-bitwise */
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var c1 = Math.pow((K1 * L), 2), c2 = Math.pow((K2 * L), 2), numWindows = 0, mssim = 0.0;
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var mcs = 0.0;
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function iteration(lumaValues1, lumaValues2, averageLumaValue1, averageLumaValue2) {
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// calculate variance and covariance
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var sigxy, sigsqx, sigsqy;
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sigxy = sigsqx = sigsqy = 0.0;
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for (var i = 0; i < lumaValues1.length; i++) {
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sigsqx += Math.pow((lumaValues1[i] - averageLumaValue1), 2);
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sigsqy += Math.pow((lumaValues2[i] - averageLumaValue2), 2);
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sigxy += (lumaValues1[i] - averageLumaValue1) * (lumaValues2[i] - averageLumaValue2);
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}
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var numPixelsInWin = lumaValues1.length - 1;
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sigsqx /= numPixelsInWin;
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sigsqy /= numPixelsInWin;
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sigxy /= numPixelsInWin;
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// perform ssim calculation on window
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var numerator = (2 * averageLumaValue1 * averageLumaValue2 + c1) * (2 * sigxy + c2);
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var denominator = (Math.pow(averageLumaValue1, 2) + Math.pow(averageLumaValue2, 2) + c1) * (sigsqx + sigsqy + c2);
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mssim += numerator / denominator;
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mcs += (2 * sigxy + c2) / (sigsqx + sigsqy + c2);
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numWindows++;
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}
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// calculate SSIM for each window
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Internals._iterate(image1, image2, windowSize, luminance, iteration);
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return { ssim: mssim / numWindows, mcs: mcs / numWindows };
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}
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ImageSSIM.compare = compare;
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/**
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* Internal functions.
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*/
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var Internals;
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(function (Internals) {
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function _iterate(image1, image2, windowSize, luminance, callback) {
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var width = image1.width, height = image1.height;
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for (var y = 0; y < height; y += windowSize) {
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for (var x = 0; x < width; x += windowSize) {
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// avoid out-of-width/height
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var windowWidth = Math.min(windowSize, width - x), windowHeight = Math.min(windowSize, height - y);
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var lumaValues1 = _lumaValuesForWindow(image1, x, y, windowWidth, windowHeight, luminance), lumaValues2 = _lumaValuesForWindow(image2, x, y, windowWidth, windowHeight, luminance), averageLuma1 = _averageLuma(lumaValues1), averageLuma2 = _averageLuma(lumaValues2);
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callback(lumaValues1, lumaValues2, averageLuma1, averageLuma2);
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}
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}
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}
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Internals._iterate = _iterate;
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function _lumaValuesForWindow(image, x, y, width, height, luminance) {
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var array = image.data, lumaValues = new Float32Array(new ArrayBuffer(width * height * 4)), counter = 0;
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var maxj = y + height;
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for (var j = y; j < maxj; j++) {
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var offset = j * image.width;
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var i = (offset + x) * image.channels;
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var maxi = (offset + x + width) * image.channels;
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switch (image.channels) {
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case 1 /* Grey */:
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while (i < maxi) {
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// (0.212655 + 0.715158 + 0.072187) === 1
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lumaValues[counter++] = array[i++];
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}
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break;
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case 2 /* GreyAlpha */:
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while (i < maxi) {
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lumaValues[counter++] = array[i++] * (array[i++] / 255);
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}
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break;
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case 3 /* RGB */:
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if (luminance) {
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while (i < maxi) {
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lumaValues[counter++] = (array[i++] * 0.212655 + array[i++] * 0.715158 + array[i++] * 0.072187);
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}
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}
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else {
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while (i < maxi) {
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lumaValues[counter++] = (array[i++] + array[i++] + array[i++]);
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}
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}
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break;
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case 4 /* RGBAlpha */:
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if (luminance) {
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while (i < maxi) {
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lumaValues[counter++] = (array[i++] * 0.212655 + array[i++] * 0.715158 + array[i++] * 0.072187) * (array[i++] / 255);
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}
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}
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else {
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while (i < maxi) {
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lumaValues[counter++] = (array[i++] + array[i++] + array[i++]) * (array[i++] / 255);
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}
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}
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break;
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}
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}
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return lumaValues;
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}
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function _averageLuma(lumaValues) {
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var sumLuma = 0.0;
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for (var i = 0; i < lumaValues.length; i++) {
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sumLuma += lumaValues[i];
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}
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return sumLuma / lumaValues.length;
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}
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})(Internals || (Internals = {}));
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})(ImageSSIM || (ImageSSIM = {}));
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module.exports = ImageSSIM;
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