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# Export utilities for dwpose-editor

import json
import numpy as np
from PIL import Image, ImageDraw
import io
import base64
from datetime import datetime
from .notifications import notify_success, notify_error

def _detect_source_resolution_from_data(pose_data):
    """推定的にデータ座標系の解像度を検出(最大x/yから推定)"""
    try:
        max_x = 0.0
        max_y = 0.0
        def scan_points(arr):
            nonlocal max_x, max_y
            if not arr: return
            for i in range(0, len(arr), 3):
                if i + 2 < len(arr):
                    x, y, conf = arr[i], arr[i+1], arr[i+2]
                    if conf is None or conf <= 0: 
                        continue
                    # 正規化の可能性は別で判定するので、そのまま最大値を取る
                    if isinstance(x, (int, float)) and isinstance(y, (int, float)):
                        max_x = max(max_x, float(x))
                        max_y = max(max_y, float(y))

        if isinstance(pose_data, dict) and 'people' in pose_data and pose_data['people']:
            person = pose_data['people'][0]
            scan_points(person.get('pose_keypoints_2d', []))
            scan_points(person.get('hand_left_keypoints_2d', []))
            scan_points(person.get('hand_right_keypoints_2d', []))
            scan_points(person.get('face_keypoints_2d', []))
        else:
            # bodies/hands/faces 互換
            if 'bodies' in pose_data and pose_data['bodies'] and 'candidate' in pose_data['bodies']:
                cands = pose_data['bodies']['candidate'] or []
                for c in cands:
                    if c and len(c) >= 2:
                        max_x = max(max_x, float(c[0]))
                        max_y = max(max_y, float(c[1]))
            for hand in (pose_data.get('hands') or []):
                scan_points(hand)
            for face in (pose_data.get('faces') or []):
                scan_points(face)

        # 正規化(<=1)っぽい場合はNone返却
        if max_x <= 1.01 and max_y <= 1.01:
            return None
        # ゼロは不正
        if max_x <= 0 or max_y <= 0:
            return None
        # 端数をそのまま使うより、丸め込む(最小でも整数)
        return (int(round(max_x)), int(round(max_y)))
    except Exception:
        return None

def get_timestamp_filename(prefix, extension):
    """
    タイムスタンプ付きファイル名を生成
    
    Args:
        prefix: ファイル名の前置詞
        extension: ファイル拡張子(ドットなし)
    
    Returns:
        str: タイムスタンプ付きファイル名
    """
    timestamp = datetime.now().strftime("%Y%m%d_%H%M%S")
    return f"{prefix}_{timestamp}.{extension}"

def export_pose_as_image(pose_data, canvas_size=(640, 640), background_color=(0, 0, 0), enable_hands=True, enable_face=True):
    """
    ポーズデータを画像として出力
    
    Args:
        pose_data: DWPoseデータ
        canvas_size: 出力画像サイズ
        background_color: 背景色 (R, G, B)
        enable_hands: 手を描画するかどうか
        enable_face: 顔を描画するかどうか
    
    Returns:
        PIL.Image: ポーズ画像
    """
    try:
        print(f"[DEBUG] 🎨 export_pose_as_image開始 - データ: {bool(pose_data)}")
        if not pose_data:
            print(f"[DEBUG] ❌ export_pose_as_image: ポーズデータなし")
            notify_error("ポーズデータがありません")
            return None
        
        print(f"[DEBUG] 🎨 ポーズデータ構造: {list(pose_data.keys()) if isinstance(pose_data, dict) else type(pose_data)}")
        
        # 新しい画像を作成
        image = Image.new('RGB', canvas_size, background_color)
        draw = ImageDraw.Draw(image)
        print(f"[DEBUG] 🎨 背景画像作成完了: {canvas_size}")
        
        # 解像度(元データ座標系)
        src_w, src_h = canvas_size
        if isinstance(pose_data, dict):
            if 'resolution' in pose_data and isinstance(pose_data['resolution'], (list, tuple)) and len(pose_data['resolution']) >= 2:
                src_w, src_h = int(pose_data['resolution'][0] or canvas_size[0]), int(pose_data['resolution'][1] or canvas_size[1])
            elif 'metadata' in pose_data and isinstance(pose_data['metadata'], dict) and 'resolution' in pose_data['metadata']:
                res = pose_data['metadata'].get('resolution', canvas_size)
                if isinstance(res, (list, tuple)) and len(res) >= 2:
                    src_w, src_h = int(res[0] or canvas_size[0]), int(res[1] or canvas_size[1])

        # 解像度が未設定のときのみ、データから推定した解像度を利用(誤検出による過度な拡大を防止)
        if (not isinstance(pose_data, dict)) or (
            ('resolution' not in pose_data or not pose_data.get('resolution')) and 
            (pose_data.get('metadata') is None or not pose_data['metadata'].get('resolution'))
        ):
            detected = _detect_source_resolution_from_data(pose_data)
            if detected is not None:
                src_w, src_h = detected

        # ボディの描画(refs準拠)
        print(f"[DEBUG] 🧭 Export scale info: src_res=({src_w},{src_h}) -> out=({canvas_size[0]},{canvas_size[1]})")
        if 'people' in pose_data and pose_data['people']:
            print(f"[DEBUG] 🎨 ボディ描画開始(refs準拠)")
            draw_body_on_image(draw, pose_data, canvas_size, (src_w, src_h))
            print(f"[DEBUG] 🎨 ボディ描画完了")
        else:
            print(f"[DEBUG] ⚠️ ボディデータなし - people: {'people' in pose_data}, count: {len(pose_data.get('people', []))}")
        
        # 💖 手の描画(people形式とhands形式両対応)
        if enable_hands:
            hands_data = None
            if 'people' in pose_data and pose_data['people'] and len(pose_data['people']) > 0:
                person = pose_data['people'][0]
                left_hand = person.get('hand_left_keypoints_2d', [])
                right_hand = person.get('hand_right_keypoints_2d', [])
                if left_hand or right_hand:
                    hands_data = [left_hand, right_hand]
                    print(f"[DEBUG] 🎨 手描画開始(people形式)- 左: {len(left_hand)}, 右: {len(right_hand)}")
            elif 'hands' in pose_data and pose_data['hands']:
                hands_data = pose_data['hands']
                print(f"[DEBUG] 🎨 手描画開始(hands形式)")
            
            if hands_data:
                draw_hands_on_image(draw, hands_data, canvas_size, (src_w, src_h))
                print(f"[DEBUG] 🎨 手描画完了")
            else:
                print(f"[DEBUG] ⚠️ 手描画スキップ - 手データなし")
        
        # 💖 顔の描画(people形式とfaces形式両対応)
        if enable_face:
            face_data = None
            if 'people' in pose_data and pose_data['people'] and len(pose_data['people']) > 0:
                person = pose_data['people'][0]
                face_keypoints = person.get('face_keypoints_2d', [])
                if face_keypoints:
                    face_data = [face_keypoints]
                    print(f"[DEBUG] 🎨 顔描画開始(people形式)- キーポイント: {len(face_keypoints)}")
            elif 'faces' in pose_data and pose_data['faces']:
                face_data = pose_data['faces']
                print(f"[DEBUG] 🎨 顔描画開始(faces形式)")
            
            if face_data:
                draw_faces_on_image(draw, face_data, canvas_size, (src_w, src_h))
                print(f"[DEBUG] 🎨 顔描画完了")
            else:
                print(f"[DEBUG] ⚠️ 顔描画スキップ - 顔データなし")
        
        print(f"[DEBUG] 🎨 export_pose_as_image成功!")
        # 通知はapp.py側で行う(重複回避)
        return image
        
    except Exception as e:
        print(f"[DEBUG] ❌ export_pose_as_image例外: {e}")
        notify_error(f"ポーズ画像エクスポートに失敗しました: {str(e)}")
        return None

def draw_body_on_image(draw, pose_data, canvas_size, source_resolution=None):
    """画像にボディを描画(refs準拠)"""
    try:
        print(f"[DEBUG] 🎨 draw_body_on_image開始(refs準拠)")
        
        # refs準拠:peopleからpose_keypoints_2dを取得
        people = pose_data.get("people", [])
        if not people:
            print(f"[DEBUG] ⚠️ people が空のため描画スキップ")
            return
        
        # refs準拠:接続定義(issue_042修正版 - JavaScript側と統一)
        connections = [
            [1, 2], [1, 5], [2, 3], [3, 4], [5, 6], [6, 7], [1, 8], [8, 9],
            [9, 10], [1, 11], [11, 12], [12, 13], [1, 0], [0, 14], [14, 16],
            [0, 15], [15, 17], [13, 18], [10, 19]  # 修正:右足首→右つま先、左足首→左つま先
        ]
        
        # refs準拠:色定義(BGR→RGB変換)
        skeleton_colors = [
            (0, 0, 255), (0, 85, 255), (0, 170, 255), (0, 255, 255), (0, 255, 170), (0, 255, 85), (0, 255, 0),
            (85, 255, 0), (170, 255, 0), (255, 255, 0), (170, 255, 0), (85, 255, 0), (255, 0, 0), (255, 0, 85),
            (255, 0, 170), (255, 0, 255), (170, 0, 255), (85, 0, 255), (255, 255, 170), (170, 255, 255)
        ]
        
        W, H = canvas_size
        srcW, srcH = (source_resolution or canvas_size)
        if srcW <= 0 or srcH <= 0:
            srcW, srcH = W, H
        detection_threshold = 0.3
        
        for person in people:
            keypoints_flat = person.get("pose_keypoints_2d", [])
            print(f"[DEBUG] 🎨 keypoints_flat length: {len(keypoints_flat)}")
            
            # refs準拠:3要素ずつ分割してキーポイントリスト作成
            keypoints = []
            for i in range(0, len(keypoints_flat), 3):
                if i + 2 < len(keypoints_flat):
                    x, y, confidence = keypoints_flat[i:i+3]
                    keypoints.append([x, y, confidence])
            
            print(f"[DEBUG] 🎨 keypoints count: {len(keypoints)}")
            
            # 座標の正規化/解像度差吸収(0..1正規化 or ピクセル→出力解像度へスケール)
            is_normalized = len(keypoints) > 0 and all(0 <= kp[0] <= 1 and 0 <= kp[1] <= 1 for kp in keypoints if kp[2] > 0)
            if is_normalized:
                for kp in keypoints:
                    if kp[2] > 0:
                        kp[0] *= W
                        kp[1] *= H
            else:
                # ピクセル座標 → 出力サイズへスケール(元解像度→出力解像度)
                sx = W / float(srcW)
                sy = H / float(srcH)
                for kp in keypoints:
                    if kp[2] > 0:
                        kp[0] *= sx
                        kp[1] *= sy
            
            # refs準拠:接続線の描画
            for i, connection in enumerate(connections):
                if i < len(skeleton_colors):
                    color = skeleton_colors[i]
                else:
                    color = skeleton_colors[i % len(skeleton_colors)]
                
                idx1, idx2 = connection
                
                if 0 <= idx1 < len(keypoints) and 0 <= idx2 < len(keypoints):
                    kp1 = keypoints[idx1]
                    kp2 = keypoints[idx2]
                    
                    if kp1[2] > detection_threshold and kp2[2] > detection_threshold:
                        # refs準拠:太い線の描画(PIL版)
                        draw.line([
                            (int(kp1[0]), int(kp1[1])),
                            (int(kp2[0]), int(kp2[1]))
                        ], fill=color, width=4)
            
            # refs準拠:キーポイントの描画
            for i, kp in enumerate(keypoints):
                x, y, confidence = kp
                if confidence > detection_threshold:
                    if i < len(skeleton_colors):
                        color = skeleton_colors[i]
                    else:
                        color = skeleton_colors[i % len(skeleton_colors)]
                    
                    draw.ellipse([int(x)-4, int(y)-4, int(x)+4, int(y)+4], fill=color)
        
        print(f"[DEBUG] 🎨 draw_body_on_image完了")
        
    except Exception as e:
        print(f"[DEBUG] ❌ draw_body_on_image例外: {e}")
        import traceback
        traceback.print_exc()

def draw_hands_on_image(draw, hands_data, canvas_size, source_resolution=None):
    """💖 画像に手を描画(座標変換対応)"""
    W, H = canvas_size
    srcW, srcH = (source_resolution or canvas_size)
    if srcW <= 0 or srcH <= 0:
        srcW, srcH = W, H
    for hand in hands_data:
        if hand and len(hand) > 0:
            for i in range(0, len(hand), 3):
                if i + 2 < len(hand):
                    x, y, conf = hand[i], hand[i+1], hand[i+2]
                    if conf > 0.3:
                        # 💖 座標の正規化/ピクセルスケール
                        if 0 <= x <= 1 and 0 <= y <= 1:
                            x = x * W
                            y = y * H
                        else:
                            x = x * (W / float(srcW))
                            y = y * (H / float(srcH))
                        # refs準拠: OpenCV(255,0,0)BGR → PIL(0,0,255)RGB = 青
                        draw.ellipse([int(x)-3, int(y)-3, int(x)+3, int(y)+3], fill=(0, 0, 255))

def draw_faces_on_image(draw, faces_data, canvas_size, source_resolution=None):
    """💖 画像に顔を描画(座標変換対応)"""
    W, H = canvas_size
    srcW, srcH = (source_resolution or canvas_size)
    if srcW <= 0 or srcH <= 0:
        srcW, srcH = W, H
    for face in faces_data:
        if face and len(face) > 0:
            for i in range(0, len(face), 3):
                if i + 2 < len(face):
                    x, y, conf = face[i], face[i+1], face[i+2]
                    if conf > 0.3:
                        # 💖 座標の正規化/ピクセルスケール
                        if 0 <= x <= 1 and 0 <= y <= 1:
                            x = x * W
                            y = y * H
                        else:
                            x = x * (W / float(srcW))
                            y = y * (H / float(srcH))
                        # refs準拠: OpenCV(255,255,255)BGR → PIL(255,255,255)RGB = 白
                        draw.ellipse([int(x)-2, int(y)-2, int(x)+2, int(y)+2], fill=(255, 255, 255))

def export_pose_as_json(pose_data, include_metadata=False):
    """
    ポーズデータをpeople形式のJSONとして出力
    
    Args:
        pose_data: DWPoseデータ(people形式またはbodies形式)
        include_metadata: メタデータを含めるかどうか(デフォルト: False)
    
    Returns:
        str: people形式のJSON文字列
    """
    try:
        if not pose_data:
            notify_error("ポーズデータがありません")
            return None
        
        # people形式の出力データ構造を作成
        export_data = []
        
        # デフォルトの解像度
        canvas_width = 512
        canvas_height = 512
        
        # pose_dataから解像度情報を取得
        if 'resolution' in pose_data and pose_data['resolution']:
            resolution = pose_data['resolution']
            if isinstance(resolution, list) and len(resolution) >= 2:
                canvas_width = int(resolution[0])
                canvas_height = int(resolution[1])
        elif 'metadata' in pose_data and 'resolution' in pose_data['metadata']:
            resolution = pose_data['metadata']['resolution']
            if isinstance(resolution, list) and len(resolution) >= 2:
                canvas_width = int(resolution[0])
                canvas_height = int(resolution[1])
        
        # people形式データの構築
        person_data = {
            "pose_keypoints_2d": [],
            "face_keypoints_2d": [],
            "hand_left_keypoints_2d": [],
            "hand_right_keypoints_2d": []
        }
        
        # people形式が既に存在する場合はそのまま使用
        if 'people' in pose_data and pose_data['people']:
            person_data = pose_data['people'][0].copy()
            
            # 🦶✨ DWPose 25キーポイント対応:people形式でもパディング確認
            if "pose_keypoints_2d" in person_data:
                keypoint_count = len(person_data["pose_keypoints_2d"]) // 3
                if keypoint_count < 25:
                    padding_needed = 25 - keypoint_count
                    for _ in range(padding_needed):
                        person_data["pose_keypoints_2d"].extend([0, 0, 0])
        else:
            # bodies形式からpeople形式に変換
            if 'bodies' in pose_data and 'candidate' in pose_data['bodies']:
                candidates = pose_data['bodies']['candidate']
                for candidate in candidates:
                    if candidate and len(candidate) >= 2:
                        person_data["pose_keypoints_2d"].extend([
                            candidate[0], 
                            candidate[1], 
                            candidate[2] if len(candidate) > 2 else 1.0
                        ])
                
                # 🦶✨ DWPose 25キーポイント対応:25個未満の場合は0でパディング
                keypoint_count = len(person_data["pose_keypoints_2d"]) // 3
                if keypoint_count < 25:
                    padding_needed = 25 - keypoint_count
                    for _ in range(padding_needed):
                        person_data["pose_keypoints_2d"].extend([0, 0, 0])
            
            # 手データ
            if 'hands' in pose_data and pose_data['hands']:
                hands = pose_data['hands']
                if len(hands) > 0:
                    person_data["hand_left_keypoints_2d"] = hands[0] if hands[0] else []
                if len(hands) > 1:
                    person_data["hand_right_keypoints_2d"] = hands[1] if hands[1] else []
            
            # 顔データ
            if 'faces' in pose_data and pose_data['faces']:
                faces = pose_data['faces']
                if len(faces) > 0:
                    person_data["face_keypoints_2d"] = faces[0] if faces[0] else []
        
        # フレームデータの構築
        frame_data = {
            "people": [person_data],
            "canvas_width": canvas_width,
            "canvas_height": canvas_height
        }
        
        export_data.append(frame_data)
        
        json_str = json.dumps(export_data, indent=2, ensure_ascii=False)
        # 通知はapp.py側で行う(重複回避)
        return json_str
        
    except Exception as e:
        notify_error(f"JSONエクスポートに失敗しました: {str(e)}")
        return None

def create_download_link(content, filename, content_type="text/plain"):
    """
    ダウンロードリンク用のデータURLを作成
    
    Args:
        content: ファイル内容(文字列またはバイト)
        filename: ファイル名
        content_type: MIMEタイプ
    
    Returns:
        str: データURL
    """
    try:
        if isinstance(content, str):
            content = content.encode('utf-8')
        
        b64_content = base64.b64encode(content).decode()
        return f"data:{content_type};base64,{b64_content}"
        
    except Exception as e:
        print(f"Download link creation error: {e}")
        return None