correction suppression modele yolo

This commit is contained in:
streaper2
2026-04-29 10:12:29 +02:00
parent fba3b41f2f
commit 105eb1cab0
9 changed files with 4 additions and 397 deletions

View File

@@ -363,47 +363,6 @@ class AnalysisProvider extends ChangeNotifier {
return detectedImpacts.length;
}
/// Auto-detect impacts using YOLOv8 model
Future<int> autoDetectImpactsWithYOLO({bool clearExisting = false}) async {
if (_imagePath == null || _targetType == null) return 0;
try {
final detectedImpacts = await _detectionService.detectImpactsWithYOLO(
_imagePath!,
_targetType!,
_targetCenterX,
_targetCenterY,
_targetRadius,
_ringCount,
);
if (clearExisting) {
_shots.clear();
}
// Add detected impacts as shots
for (final impact in detectedImpacts) {
final shot = Shot(
id: _uuid.v4(),
x: impact.x,
y: impact.y,
score: impact.suggestedScore,
sessionId: '',
);
_shots.add(shot);
}
_recalculateScores();
_recalculateGrouping();
notifyListeners();
return detectedImpacts.length;
} catch (e) {
print('Error in YOLO auto-detection: $e');
return 0;
}
}
/// Detect impacts with OpenCV using reference points
Future<int> detectFromReferencesWithOpenCV({
double tolerance = 2.0,

View File

@@ -1050,72 +1050,6 @@ class _AnalysisScreenContentState extends State<_AnalysisScreenContent> {
mainAxisSize: MainAxisSize.min,
crossAxisAlignment: CrossAxisAlignment.start,
children: [
// YOLO option button
Card(
color: AppTheme.primaryColor.withAlpha(25),
child: ListTile(
leading: const Icon(Icons.psychology, color: AppTheme.primaryColor),
title: const Text('IA Detection (YOLOv8)', style: TextStyle(fontWeight: FontWeight.bold)),
subtitle: const Text('Détection intelligente via modèle entraîné'),
onTap: () async {
Navigator.pop(context);
ScaffoldMessenger.of(context).showSnackBar(
const SnackBar(
content: Row(
children: [
SizedBox(
width: 20,
height: 20,
child: CircularProgressIndicator(
strokeWidth: 2,
color: Colors.white,
),
),
SizedBox(width: 12),
Text('Détection IA en cours...'),
],
),
duration: Duration(seconds: 10),
),
);
final count = await provider.autoDetectImpactsWithYOLO(
clearExisting: clearExisting,
);
if (context.mounted) {
ScaffoldMessenger.of(context).hideCurrentSnackBar();
ScaffoldMessenger.of(context).showSnackBar(
SnackBar(
content: Text(
count > 0
? '$count impact(s) détecté(s) par l\'IA'
: 'Aucun impact détecté par l\'IA.',
),
backgroundColor: count > 0
? AppTheme.successColor
: AppTheme.warningColor,
),
);
}
},
),
),
const Padding(
padding: EdgeInsets.symmetric(vertical: 12),
child: Row(
children: [
Expanded(child: Divider()),
Padding(
padding: EdgeInsets.symmetric(horizontal: 8),
child: Text('OU', style: TextStyle(color: Colors.grey, fontSize: 12)),
),
Expanded(child: Divider()),
],
),
),
const Text(
'Détection Classique (Paramétrable):',

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@@ -10,7 +10,6 @@ import 'services/target_detection_service.dart';
import 'services/score_calculator_service.dart';
import 'services/grouping_analyzer_service.dart';
import 'services/image_processing_service.dart';
import 'services/yolo_impact_detection_service.dart';
void main() async {
WidgetsFlutterBinding.ensureInitialized();
@@ -34,13 +33,9 @@ void main() async {
Provider<ImageProcessingService>(
create: (_) => ImageProcessingService(),
),
Provider<YOLOImpactDetectionService>(
create: (_) => YOLOImpactDetectionService(),
),
Provider<TargetDetectionService>(
create: (context) => TargetDetectionService(
imageProcessingService: context.read<ImageProcessingService>(),
yoloService: context.read<YOLOImpactDetectionService>(),
),
),
Provider<ScoreCalculatorService>(

View File

@@ -2,8 +2,6 @@ import 'dart:math' as math;
import '../data/models/target_type.dart';
import 'image_processing_service.dart';
import 'opencv_impact_detection_service.dart';
import 'yolo_impact_detection_service.dart';
export 'image_processing_service.dart'
show ImpactDetectionSettings, ReferenceImpact, ImpactCharacteristics;
export 'opencv_impact_detection_service.dart'
@@ -55,16 +53,13 @@ class DetectedImpactResult {
class TargetDetectionService {
final ImageProcessingService _imageProcessingService;
final OpenCVImpactDetectionService _opencvService;
final YOLOImpactDetectionService _yoloService;
TargetDetectionService({
ImageProcessingService? imageProcessingService,
OpenCVImpactDetectionService? opencvService,
YOLOImpactDetectionService? yoloService,
}) : _imageProcessingService =
imageProcessingService ?? ImageProcessingService(),
_opencvService = opencvService ?? OpenCVImpactDetectionService(),
_yoloService = yoloService ?? YOLOImpactDetectionService();
_opencvService = opencvService ?? OpenCVImpactDetectionService();
/// Detect target and impacts from an image file
TargetDetectionResult detectTarget(String imagePath, TargetType targetType) {
@@ -379,45 +374,4 @@ class TargetDetectionService {
}
}
/// Détecte les impacts en utilisant YOLOv8
Future<List<DetectedImpactResult>> detectImpactsWithYOLO(
String imagePath,
TargetType targetType,
double centerX,
double centerY,
double radius,
int ringCount,
) async {
try {
final impacts = await _yoloService.detectImpacts(imagePath);
return impacts.map((impact) {
// Use YOLO-detected score (valeur) if available, otherwise calculate it
int score = impact.suggestedScore;
if (score <= 0) {
score = targetType == TargetType.concentric
? _calculateConcentricScoreWithRings(
impact.x,
impact.y,
centerX,
centerY,
radius,
ringCount,
)
: _calculateSilhouetteScore(impact.x, impact.y, centerX, centerY);
}
return DetectedImpactResult(
x: impact.x,
y: impact.y,
radius: impact.radius,
suggestedScore: score,
);
}).toList();
} catch (e) {
print('Erreur détection YOLOv8: $e');
return [];
}
}
}

View File

@@ -1,217 +0,0 @@
import 'dart:io';
import 'dart:math' as math;
import 'dart:typed_data';
import 'package:tflite_flutter/tflite_flutter.dart';
import 'package:image/image.dart' as img;
import 'target_detection_service.dart';
class YOLOImpactDetectionService {
Interpreter? _interpreter;
int _inputSize = 640;
List<int> _outputShape = [1, 17, 8400];
int _numClasses = 13;
static const String modelPath = 'assets/models/yolov8n_32.tflite';
static const String labelsPath = 'assets/models/labels.txt';
Future<void> init() async {
if (_interpreter != null) return;
try {
_interpreter = await Interpreter.fromAsset(modelPath);
// Get model metadata
final inputTensors = _interpreter!.getInputTensors();
if (inputTensors.isNotEmpty) {
// [1, 640, 640, 3] or [1, 3, 640, 640]
final shape = inputTensors[0].shape;
if (shape.length == 4) {
_inputSize = shape[1] == 3 ? shape[2] : shape[1];
}
}
final outputTensors = _interpreter!.getOutputTensors();
if (outputTensors.isNotEmpty) {
_outputShape = outputTensors[0].shape;
// Output is usually [1, 4 + num_classes, num_boxes]
if (_outputShape.length == 3) {
_numClasses = _outputShape[1] - 4;
}
}
print('YOLO Interpreter loaded successfully');
print('Model Input Size: $_inputSize');
print('Model Output Shape: $_outputShape (Classes: $_numClasses)');
} catch (e) {
print('Error loading YOLO model: $e');
}
}
Future<List<DetectedImpactResult>> detectImpacts(String imagePath) async {
if (_interpreter == null) await init();
if (_interpreter == null) return [];
try {
final bytes = File(imagePath).readAsBytesSync();
final decodedImage = img.decodeImage(bytes);
if (decodedImage == null) return [];
final originalImage = img.bakeOrientation(decodedImage);
final resizedImage = img.copyResize(
originalImage,
width: _inputSize,
height: _inputSize,
);
var input = _imageToByteListFloat32(resizedImage, _inputSize);
// Allocate output buffer dynamically
var output = List<double>.filled(
_outputShape.fold(1, (a, b) => a * b),
0
).reshape(_outputShape);
_interpreter!.run(input, output);
final results = _processOutput(
output[0],
originalImage.width,
originalImage.height,
);
print('YOLO Detection result count: ${results.length}');
return results;
} catch (e) {
print('Error during YOLO inference: $e');
return [];
}
}
List<DetectedImpactResult> _processOutput(
List<List<double>> output,
int imgWidth,
int imgHeight,
) {
final List<_Detection> candidates = [];
const double threshold = 0.25;
// output is typically [4 + numClasses, numBoxes]
final int rows = output.length;
final int numBoxes = output[0].length;
for (int i = 0; i < numBoxes; i++) {
double maxConfidence = 0;
int bestClass = 4;
// Find best class among all classes (indices 4 to rows-1)
for (int c = 4; c < rows; c++) {
if (output[c][i] > maxConfidence) {
maxConfidence = output[c][i];
bestClass = c;
}
}
if (maxConfidence > threshold) {
final int classIndex = bestClass - 4;
candidates.add(
_Detection(
// Use dynamic mapping: 0,1,2,3 are typically x,y,w,h
// We'll keep the current mapping for now as it matches user's previous model
y: output[0][i],
x: output[1][i],
w: output[2][i],
h: output[3][i],
confidence: maxConfidence,
classIndex: classIndex,
),
);
}
}
final List<_Detection> suppressed = _nms(candidates);
return suppressed
.map(
(det) {
// Score = ClassIndex (0 to 10) for impact models
int score = det.classIndex;
return DetectedImpactResult(
x: det.x,
y: det.y,
radius: 5.0,
suggestedScore: score,
);
},
)
.toList();
}
List<_Detection> _nms(List<_Detection> detections) {
if (detections.isEmpty) return [];
detections.sort((a, b) => b.confidence.compareTo(a.confidence));
final List<_Detection> selected = [];
final List<bool> active = List.filled(detections.length, true);
for (int i = 0; i < detections.length; i++) {
if (!active[i]) continue;
selected.add(detections[i]);
for (int j = i + 1; j < detections.length; j++) {
if (!active[j]) continue;
if (_iou(detections[i], detections[j]) > 0.45) {
active[j] = false;
}
}
}
return selected;
}
double _iou(_Detection a, _Detection b) {
final double areaA = a.w * a.h;
final double areaB = b.w * b.h;
final double x1 = math.max(a.x - a.w / 2, b.x - b.w / 2);
final double y1 = math.max(a.y - a.h / 2, b.y - b.h / 2);
final double x2 = math.min(a.x + a.w / 2, b.x + b.w / 2);
final double y2 = math.min(a.y + a.h / 2, b.y + b.h / 2);
final double intersection = math.max(0.0, x2 - x1) * math.max(0.0, y2 - y1);
return intersection / (areaA + areaB - intersection);
}
Uint8List _imageToByteListFloat32(img.Image image, int inputSize) {
var convertedBytes = Float32List(1 * inputSize * inputSize * 3);
var buffer = Float32List.view(convertedBytes.buffer);
int pixelIndex = 0;
for (int i = 0; i < inputSize; i++) {
for (int j = 0; j < inputSize; j++) {
var pixel = image.getPixel(j, i);
buffer[pixelIndex++] = (pixel.r / 255.0);
buffer[pixelIndex++] = (pixel.g / 255.0);
buffer[pixelIndex++] = (pixel.b / 255.0);
}
}
return convertedBytes.buffer.asUint8List();
}
}
class _Detection {
final double x, y, w, h, confidence;
final int classIndex;
_Detection({
required this.x,
required this.y,
required this.w,
required this.h,
required this.confidence,
required this.classIndex,
});
}

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@@ -7,7 +7,6 @@ list(APPEND FLUTTER_PLUGIN_LIST
)
list(APPEND FLUTTER_FFI_PLUGIN_LIST
tflite_flutter
)
set(PLUGIN_BUNDLED_LIBRARIES)

View File

@@ -536,14 +536,6 @@ packages:
url: "https://pub.dev"
source: hosted
version: "2.2.0"
quiver:
dependency: transitive
description:
name: quiver
sha256: ea0b925899e64ecdfbf9c7becb60d5b50e706ade44a85b2363be2a22d88117d2
url: "https://pub.dev"
source: hosted
version: "3.2.2"
sky_engine:
dependency: transitive
description: flutter
@@ -661,14 +653,6 @@ packages:
url: "https://pub.dev"
source: hosted
version: "0.7.9"
tflite_flutter:
dependency: "direct main"
description:
name: tflite_flutter
sha256: "48e6fde2ad97162bb66a16a142f4c4698add9e8cd397ce9d1cc7451b55537ac1"
url: "https://pub.dev"
source: hosted
version: "0.11.0"
typed_data:
dependency: transitive
description:

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@@ -65,7 +65,7 @@ dependencies:
image: ^4.1.7
# Machine Learning for YOLOv8
tflite_flutter: ^0.11.0
# tflite_flutter: ^0.11.0
dev_dependencies:
flutter_test:
@@ -90,8 +90,8 @@ flutter:
uses-material-design: true
# To add assets to your application, add an assets section, like this:
assets:
- assets/models/yolov8n_32.tflite
# assets:
# - assets/models/yolov8n_32.tflite
# - images/a_dot_burr.jpeg
# - images/a_dot_ham.jpeg

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@@ -7,7 +7,6 @@ list(APPEND FLUTTER_PLUGIN_LIST
)
list(APPEND FLUTTER_FFI_PLUGIN_LIST
tflite_flutter
)
set(PLUGIN_BUNDLED_LIBRARIES)