/**
* Invoice extraction test using PaddleOCR-VL Full Pipeline
*
* This tests the complete PaddleOCR-VL pipeline:
* 1. PP-DocLayoutV2 for layout detection
* 2. PaddleOCR-VL for recognition
* 3. Structured HTML output (semantic tags with proper tables)
* 4. Qwen2.5 extracts invoice fields from structured HTML
*
* HTML output is used instead of Markdown because:
* -
tags are unambiguous (no parser variations)
* - LLMs are heavily trained on web/HTML data
* - Semantic tags (header, footer, section) provide clear structure
*/
import { tap, expect } from '@git.zone/tstest/tapbundle';
import * as fs from 'fs';
import * as path from 'path';
import { execSync } from 'child_process';
import * as os from 'os';
import { ensurePaddleOcrVlFull, ensureQwen25 } from './helpers/docker.js';
const PADDLEOCR_VL_URL = 'http://localhost:8000';
const OLLAMA_URL = 'http://localhost:11434';
// Use Qwen2.5 for text-only JSON extraction (not MiniCPM which is vision-focused)
const TEXT_MODEL = 'qwen2.5:7b';
interface IInvoice {
invoice_number: string;
invoice_date: string;
vendor_name: string;
currency: string;
net_amount: number;
vat_amount: number;
total_amount: number;
}
/**
* Convert PDF to PNG images using ImageMagick
*/
function convertPdfToImages(pdfPath: string): string[] {
const tempDir = fs.mkdtempSync(path.join(os.tmpdir(), 'pdf-convert-'));
const outputPattern = path.join(tempDir, 'page-%d.png');
try {
execSync(
`convert -density 200 -quality 90 "${pdfPath}" -background white -alpha remove "${outputPattern}"`,
{ stdio: 'pipe' }
);
const files = fs.readdirSync(tempDir).filter((f) => f.endsWith('.png')).sort();
const images: string[] = [];
for (const file of files) {
const imagePath = path.join(tempDir, file);
const imageData = fs.readFileSync(imagePath);
images.push(imageData.toString('base64'));
}
return images;
} finally {
fs.rmSync(tempDir, { recursive: true, force: true });
}
}
/**
* Parse document using PaddleOCR-VL Full Pipeline (returns structured HTML)
*/
async function parseDocument(imageBase64: string): Promise {
const response = await fetch(`${PADDLEOCR_VL_URL}/parse`, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify({
image: imageBase64,
output_format: 'html',
}),
});
if (!response.ok) {
const text = await response.text();
throw new Error(`PaddleOCR-VL API error: ${response.status} - ${text}`);
}
const data = await response.json();
if (!data.success) {
throw new Error(`PaddleOCR-VL error: ${data.error}`);
}
return data.result?.html || '';
}
/**
* Extract invoice fields from structured HTML using Qwen2.5 (text-only model)
*/
async function extractInvoiceFromHtml(html: string): Promise {
// Truncate if too long (HTML is more valuable per byte, allow more)
const truncated = html.length > 16000 ? html.slice(0, 16000) : html;
console.log(` [Extract] Processing ${truncated.length} chars of HTML`);
const prompt = `You are an invoice data extractor. Extract the following fields from this HTML document (OCR output with semantic structure) and return ONLY a valid JSON object.
The HTML uses semantic tags:
- with / for structured tables (invoice line items, totals)
- for document header (company info, invoice number)
- for document footer (payment terms, legal text)
- for table regions
- data-type and data-y attributes indicate block type and vertical position
Required fields:
- invoice_number: The invoice/receipt/document number
- invoice_date: Date in YYYY-MM-DD format (convert from any format)
- vendor_name: Company that issued the invoice
- currency: EUR, USD, GBP, etc.
- net_amount: Amount before tax (number)
- vat_amount: Tax/VAT amount (number, use 0 if reverse charge or not shown)
- total_amount: Final total amount (number)
Example output format:
{"invoice_number":"INV-123","invoice_date":"2022-01-28","vendor_name":"Adobe","currency":"EUR","net_amount":24.99,"vat_amount":0,"total_amount":24.99}
Rules:
- Return ONLY the JSON object, no explanation or markdown
- Use null for missing string fields
- Use 0 for missing numeric fields
- Convert dates to YYYY-MM-DD format (e.g., "28-JAN-2022" becomes "2022-01-28")
- Extract numbers without currency symbols
- Look for totals in sections, especially rows with "Total", "Amount Due", "Grand Total"
HTML Document:
${truncated}
JSON:`;
const payload = {
model: TEXT_MODEL,
prompt,
stream: true,
options: {
num_predict: 512,
temperature: 0.1,
},
};
const response = await fetch(`${OLLAMA_URL}/api/generate`, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify(payload),
});
if (!response.ok) {
throw new Error(`Ollama API error: ${response.status}`);
}
const reader = response.body?.getReader();
if (!reader) {
throw new Error('No response body');
}
const decoder = new TextDecoder();
let fullText = '';
while (true) {
const { done, value } = await reader.read();
if (done) break;
const chunk = decoder.decode(value, { stream: true });
const lines = chunk.split('\n').filter((l) => l.trim());
for (const line of lines) {
try {
const json = JSON.parse(line);
if (json.response) {
fullText += json.response;
}
} catch {
// Skip invalid JSON lines
}
}
}
// Extract JSON from response
const startIdx = fullText.indexOf('{');
const endIdx = fullText.lastIndexOf('}') + 1;
if (startIdx < 0 || endIdx <= startIdx) {
throw new Error(`No JSON object found in response: ${fullText.substring(0, 200)}`);
}
const jsonStr = fullText.substring(startIdx, endIdx);
const parsed = JSON.parse(jsonStr);
// Ensure numeric fields are actually numbers
return {
invoice_number: parsed.invoice_number || null,
invoice_date: parsed.invoice_date || null,
vendor_name: parsed.vendor_name || null,
currency: parsed.currency || 'EUR',
net_amount: parseFloat(parsed.net_amount) || 0,
vat_amount: parseFloat(parsed.vat_amount) || 0,
total_amount: parseFloat(parsed.total_amount) || 0,
};
}
/**
* Single extraction pass: Parse with PaddleOCR-VL Full, extract with Qwen2.5 (text-only)
*/
async function extractOnce(images: string[], passNum: number): Promise {
// Parse document with full pipeline (PaddleOCR-VL) -> returns HTML
const html = await parseDocument(images[0]);
console.log(` [Parse] Got ${html.split('\n').length} lines of HTML`);
// Extract invoice fields from HTML using text-only model (no images)
return extractInvoiceFromHtml(html);
}
/**
* Create a hash of invoice for comparison (using key fields)
*/
function hashInvoice(invoice: IInvoice): string {
// Ensure total_amount is a number
const amount = typeof invoice.total_amount === 'number'
? invoice.total_amount.toFixed(2)
: String(invoice.total_amount || 0);
return `${invoice.invoice_number}|${invoice.invoice_date}|${amount}`;
}
/**
* Extract with consensus voting
*/
async function extractWithConsensus(images: string[], invoiceName: string, maxPasses: number = 5): Promise {
const results: Array<{ invoice: IInvoice; hash: string }> = [];
const hashCounts: Map = new Map();
const addResult = (invoice: IInvoice, passLabel: string): number => {
const hash = hashInvoice(invoice);
results.push({ invoice, hash });
hashCounts.set(hash, (hashCounts.get(hash) || 0) + 1);
console.log(` [${passLabel}] ${invoice.invoice_number} | ${invoice.invoice_date} | ${invoice.total_amount} ${invoice.currency}`);
return hashCounts.get(hash)!;
};
for (let pass = 1; pass <= maxPasses; pass++) {
try {
const invoice = await extractOnce(images, pass);
const count = addResult(invoice, `Pass ${pass}`);
if (count >= 2) {
console.log(` [Consensus] Reached after ${pass} passes`);
return invoice;
}
} catch (err) {
console.log(` [Pass ${pass}] Error: ${err}`);
}
}
// No consensus reached - return the most common result
let bestHash = '';
let bestCount = 0;
for (const [hash, count] of hashCounts) {
if (count > bestCount) {
bestCount = count;
bestHash = hash;
}
}
if (!bestHash) {
throw new Error(`No valid results for ${invoiceName}`);
}
const best = results.find((r) => r.hash === bestHash)!;
console.log(` [No consensus] Using most common result (${bestCount}/${maxPasses} passes)`);
return best.invoice;
}
/**
* Normalize date to YYYY-MM-DD format
*/
function normalizeDate(dateStr: string | null): string {
if (!dateStr) return '';
// Already in correct format
if (/^\d{4}-\d{2}-\d{2}$/.test(dateStr)) {
return dateStr;
}
// Handle DD-MMM-YYYY format (e.g., "28-JUN-2022")
const monthMap: Record = {
JAN: '01', FEB: '02', MAR: '03', APR: '04', MAY: '05', JUN: '06',
JUL: '07', AUG: '08', SEP: '09', OCT: '10', NOV: '11', DEC: '12',
};
const match = dateStr.match(/^(\d{1,2})-([A-Z]{3})-(\d{4})$/i);
if (match) {
const day = match[1].padStart(2, '0');
const month = monthMap[match[2].toUpperCase()] || '01';
const year = match[3];
return `${year}-${month}-${day}`;
}
// Handle DD/MM/YYYY or DD.MM.YYYY
const match2 = dateStr.match(/^(\d{1,2})[\/.](\d{1,2})[\/.](\d{4})$/);
if (match2) {
const day = match2[1].padStart(2, '0');
const month = match2[2].padStart(2, '0');
const year = match2[3];
return `${year}-${month}-${day}`;
}
return dateStr;
}
/**
* Compare extracted invoice against expected
*/
function compareInvoice(
extracted: IInvoice,
expected: IInvoice
): { match: boolean; errors: string[] } {
const errors: string[] = [];
// Compare invoice number (normalize by removing spaces and case)
const extNum = extracted.invoice_number?.replace(/\s/g, '').toLowerCase() || '';
const expNum = expected.invoice_number?.replace(/\s/g, '').toLowerCase() || '';
if (extNum !== expNum) {
errors.push(`invoice_number: expected "${expected.invoice_number}", got "${extracted.invoice_number}"`);
}
// Compare date (normalize format first)
const extDate = normalizeDate(extracted.invoice_date);
const expDate = normalizeDate(expected.invoice_date);
if (extDate !== expDate) {
errors.push(`invoice_date: expected "${expected.invoice_date}", got "${extracted.invoice_date}"`);
}
// Compare total amount (with tolerance)
if (Math.abs(extracted.total_amount - expected.total_amount) > 0.02) {
errors.push(`total_amount: expected ${expected.total_amount}, got ${extracted.total_amount}`);
}
// Compare currency
if (extracted.currency?.toUpperCase() !== expected.currency?.toUpperCase()) {
errors.push(`currency: expected "${expected.currency}", got "${extracted.currency}"`);
}
return { match: errors.length === 0, errors };
}
/**
* Find all test cases (PDF + JSON pairs) in .nogit/invoices/
*/
function findTestCases(): Array<{ name: string; pdfPath: string; jsonPath: string }> {
const testDir = path.join(process.cwd(), '.nogit/invoices');
if (!fs.existsSync(testDir)) {
return [];
}
const files = fs.readdirSync(testDir);
const pdfFiles = files.filter((f) => f.endsWith('.pdf'));
const testCases: Array<{ name: string; pdfPath: string; jsonPath: string }> = [];
for (const pdf of pdfFiles) {
const baseName = pdf.replace('.pdf', '');
const jsonFile = `${baseName}.json`;
if (files.includes(jsonFile)) {
testCases.push({
name: baseName,
pdfPath: path.join(testDir, pdf),
jsonPath: path.join(testDir, jsonFile),
});
}
}
// Sort alphabetically
testCases.sort((a, b) => a.name.localeCompare(b.name));
return testCases;
}
// Tests
tap.test('setup: ensure Docker containers are running', async () => {
console.log('\n[Setup] Checking Docker containers...\n');
// Ensure PaddleOCR-VL Full Pipeline is running
const paddleOk = await ensurePaddleOcrVlFull();
expect(paddleOk).toBeTrue();
// Ensure Qwen2.5 is available (for text-only JSON extraction)
const qwenOk = await ensureQwen25();
expect(qwenOk).toBeTrue();
console.log('\n[Setup] All containers ready!\n');
});
// Dynamic test for each PDF/JSON pair
const testCases = findTestCases();
console.log(`\nFound ${testCases.length} invoice test cases (PaddleOCR-VL Full Pipeline)\n`);
let passedCount = 0;
let failedCount = 0;
const processingTimes: number[] = [];
for (const testCase of testCases) {
tap.test(`should extract invoice: ${testCase.name}`, async () => {
// Load expected data
const expected: IInvoice = JSON.parse(fs.readFileSync(testCase.jsonPath, 'utf-8'));
console.log(`\n=== ${testCase.name} ===`);
console.log(`Expected: ${expected.invoice_number} | ${expected.invoice_date} | ${expected.total_amount} ${expected.currency}`);
const startTime = Date.now();
// Convert PDF to images
const images = convertPdfToImages(testCase.pdfPath);
console.log(` Pages: ${images.length}`);
// Extract with consensus voting (PaddleOCR-VL Full -> MiniCPM)
const extracted = await extractWithConsensus(images, testCase.name);
const endTime = Date.now();
const elapsedMs = endTime - startTime;
processingTimes.push(elapsedMs);
// Compare results
const result = compareInvoice(extracted, expected);
if (result.match) {
passedCount++;
console.log(` Result: MATCH (${(elapsedMs / 1000).toFixed(1)}s)`);
} else {
failedCount++;
console.log(` Result: MISMATCH (${(elapsedMs / 1000).toFixed(1)}s)`);
result.errors.forEach((e) => console.log(` - ${e}`));
}
// Assert match
expect(result.match).toBeTrue();
});
}
tap.test('summary', async () => {
const totalInvoices = testCases.length;
const accuracy = totalInvoices > 0 ? (passedCount / totalInvoices) * 100 : 0;
const totalTimeMs = processingTimes.reduce((a, b) => a + b, 0);
const avgTimeMs = processingTimes.length > 0 ? totalTimeMs / processingTimes.length : 0;
const avgTimeSec = avgTimeMs / 1000;
const totalTimeSec = totalTimeMs / 1000;
console.log(`\n======================================================`);
console.log(` Invoice Extraction Summary (PaddleOCR-VL Full)`);
console.log(`======================================================`);
console.log(` Method: PaddleOCR-VL Full Pipeline (HTML) -> Qwen2.5 (text-only)`);
console.log(` Passed: ${passedCount}/${totalInvoices}`);
console.log(` Failed: ${failedCount}/${totalInvoices}`);
console.log(` Accuracy: ${accuracy.toFixed(1)}%`);
console.log(`------------------------------------------------------`);
console.log(` Total time: ${totalTimeSec.toFixed(1)}s`);
console.log(` Avg per inv: ${avgTimeSec.toFixed(1)}s`);
console.log(`======================================================\n`);
});
export default tap.start();