749 lines
31 KiB
Python
Executable File
749 lines
31 KiB
Python
Executable File
"""
|
||
图片复杂度识别模块
|
||
|
||
使用智谱 GLM-4V 视觉模型分析客户发来的图片,
|
||
判断处理难度,为客服AI提供报价依据。
|
||
|
||
复杂度等级(越平整越便宜):
|
||
simple → 10-15元(画面平整、无小字、无人脸、无阴影)
|
||
normal → 15-20元(一般复杂度)
|
||
complex → 20-25元(有褶皱/小字/人脸/阴影)
|
||
hard → 25-30元(非常复杂)
|
||
|
||
报价维度:平整度、含文字(小字加价)、含人脸、阴影。
|
||
同一 URL 5 分钟内复用缓存,节省 API 调用。
|
||
"""
|
||
import os
|
||
import asyncio
|
||
import base64
|
||
import time
|
||
from typing import Optional, Tuple
|
||
from openai import AsyncOpenAI
|
||
from dotenv import load_dotenv
|
||
from PIL import Image
|
||
import aiohttp
|
||
|
||
load_dotenv()
|
||
|
||
|
||
ANALYSIS_PROMPT = """你是一个电商图片处理评估专家,同时也是 Gemini 图像生成提示词专家。
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||
请仔细分析这张图片,输出以下字段,每行一个,不要多余内容:
|
||
|
||
敏感内容: <yes|no>
|
||
平整度: <flat|mild|rough>
|
||
含文字: <yes|no>
|
||
含人脸: <yes|no>
|
||
阴影: <yes|no>
|
||
复杂度: <simple|normal|complex|hard>
|
||
原因: <15字以内,说明复杂度判断依据>
|
||
主体: <图片核心内容,如:印花图案/logo/人物/产品/老照片/风景/文字/其他>
|
||
类型: <处理类型,如:印花提取/高清修复/去背景/老照片修复/logo提取/人像修复/其他>
|
||
质量: <原图质量,如:清晰/轻微模糊/严重模糊/低分辨率/截图/扫描件>
|
||
可做: <yes|partial|no>
|
||
风险: <none|low|high>
|
||
透视: <no|mild|strong>
|
||
比例: <从以下选一个最合适的:1:1 / 9:16 / 16:9 / 3:4 / 4:3 / 3:2 / 2:3 / 5:4 / 4:5>
|
||
提示词: <为 Gemini 写处理指令,中文,60字以内,说明要做什么、保留什么、去掉什么>
|
||
备注: <给客服AI的特别提示,没有则填无>
|
||
|
||
判断规则:
|
||
|
||
【报价核心:越平整越便宜】
|
||
- 平整度 flat:画面平整、无褶皱、无透视 → 便宜
|
||
- 平整度 mild:轻微褶皱/透视 → 中等
|
||
- 平整度 rough:有褶皱/透视/曲面 → 贵
|
||
- 含文字:大字没关系不加价;小字需精细保留/清晰化 → 加价(含文字填 yes 仅指有小字的情况)
|
||
- 含人脸 yes:有人脸 → 加价
|
||
- 阴影 yes:有明显阴影需处理 → 加价
|
||
综合以上因素,越平整、无小字、无人脸、无阴影 → 越便宜(simple)
|
||
|
||
【含文字】
|
||
- yes:含小字需精细保留/清晰化(小字难处理 → 加价)
|
||
- no:无文字,或仅有大字(大字没关系 → 不加价)
|
||
|
||
【文字数量加价规则】
|
||
- none:无文字,不加价
|
||
- 少量 (1-10 字):+5 元
|
||
- 中量 (11-50 字):+10-15 元
|
||
- 大量 (51-200 字):+20-30 元
|
||
- 极多 (200 字以上):+30-50 元
|
||
|
||
【文字分层需求】
|
||
- yes:客户要求可编辑分层文件(PSD 等) → 基础价格 x2 或 +50 元起
|
||
- no:普通图片处理 → 正常价格
|
||
|
||
【文字分层 + 大量文字】
|
||
- 如果 文字数量=大量/极多 且 文字分层需求=yes → 总价可达 60-80 元
|
||
|
||
【含人脸】
|
||
- yes:图中有真实人物面孔(人像照/集体照/证件照/老照片等)
|
||
- no:无人脸或人脸极小不影响主体
|
||
|
||
【风险评估 - 重要!】
|
||
- none:印花/图案/logo/风景/产品,AI处理效果稳定,可直接报价接单
|
||
- low:有人脸但清晰度尚可,AI修复后人脸相似度70-90%,可以接单但要说明风险
|
||
- high:以下任一情况 → 严重模糊的人脸照片/老照片人像/需要打印/客户问能否找回原图
|
||
high情况下,可做改为partial,备注写明风险话术,谨慎接单
|
||
|
||
【敏感内容检测 - 必须严格判断!】
|
||
- yes:含以下任一内容 → 色情/黄色/擦边/裸露/性暗示/大尺度/涉政/暴力/血腥/违禁品
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||
敏感内容=yes 时,可做必须填 no,直接拒绝不接单
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||
- no:无上述敏感内容,可以正常接单处理
|
||
|
||
【可做判断 - 决定是否接单】
|
||
- yes:效果有把握,可以接单处理
|
||
- partial:能处理但有明显限制(人脸变形风险/分辨率极低/严重损坏)→ 可以接单但要说明风险
|
||
- no:无法接单(纯黑/纯白/完全损坏/找原始 RAW 文件/敏感内容/违法内容)
|
||
|
||
【敏感内容】优先判断,若为 yes 则 可做 必填 no
|
||
- yes:图片含色情/黄色/擦边/裸露/性暗示/大尺度等违规内容
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||
- no:无上述敏感内容
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||
|
||
【可做判断】
|
||
- yes:效果有把握,可直接处理
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||
- partial:能处理但有明显限制(人脸变形风险/分辨率极低/严重损坏)
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||
- no:无法处理(纯黑/纯白/完全损坏/找原始RAW文件/敏感内容)
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||
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||
【风险话术模板(备注字段)】
|
||
- 含人脸+需打印:AI修复后人脸可能有轻微变化,建议先看效果确认再打印
|
||
- 严重模糊人脸:这张模糊程度较高,修复后清晰了但人脸可能跟原来有差异
|
||
- 找原图:找不到原始文件,只能对现有图片做高清修复处理
|
||
- 完全损坏:这张无法处理
|
||
|
||
【透视判断】
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||
- no:正面拍摄,无明显变形
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- mild:轻微透视(衣服悬挂/桌面小角度斜拍)
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||
- strong:严重透视(俯拍/贴墙/大角度倾斜)
|
||
|
||
【比例选择】
|
||
- 印花/图案/logo/正方形 -> 1:1
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||
- 竖屏壁纸/短视频封面 -> 9:16
|
||
- 宽屏/横版视频 -> 16:9
|
||
- 移动广告/Instagram竖图 -> 4:5
|
||
- 竖向人像/海报/证件照 -> 3:4
|
||
- 竖向相机照片 -> 2:3
|
||
- 接近正方形产品图 -> 5:4
|
||
- 横向标准图/风景 -> 4:3
|
||
- 横向相机照片/产品实拍 -> 3:2
|
||
|
||
示例1(印花,无风险):
|
||
敏感内容: no
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||
平整度: mild
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||
含文字: no
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||
含人脸: no
|
||
阴影: no
|
||
复杂度: complex
|
||
原因: 印花细节密集颜色层次多
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||
主体: 印花图案
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||
类型: 印花提取
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||
质量: 轻微模糊
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||
可做: yes
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||
风险: none
|
||
透视: mild
|
||
比例: 1:1
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||
提示词: 提取衣物印花图案,去除褶皱和背景杂色,补全缺失部分,保持颜色细节100%还原,输出干净平面印花图
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||
备注: 无
|
||
|
||
示例2(人像老照片,要打印):
|
||
敏感内容: no
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||
平整度: flat
|
||
含文字: no
|
||
含人脸: yes
|
||
阴影: no
|
||
复杂度: hard
|
||
原因: 严重模糊人脸细节丢失
|
||
主体: 人物照片
|
||
类型: 人像修复
|
||
质量: 严重模糊
|
||
可做: partial
|
||
风险: high
|
||
透视: no
|
||
比例: 3:4
|
||
提示词: 对模糊人像进行高清修复,增强细节,保持人物特征不变
|
||
备注: AI修复后人脸可能有轻微变化,建议先看效果确认满意再用于打印
|
||
|
||
示例3(平整印花,最便宜):
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||
敏感内容: no
|
||
平整度: flat
|
||
含文字: no
|
||
含人脸: no
|
||
阴影: no
|
||
复杂度: simple
|
||
原因: 画面平整无褶皱无文字无人脸
|
||
主体: 印花图案
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||
类型: 印花提取
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||
质量: 清晰
|
||
可做: yes
|
||
风险: none
|
||
透视: no
|
||
比例: 1:1
|
||
提示词: 提取印花图案,去除背景,输出干净平面图
|
||
备注: 无"""
|
||
|
||
|
||
class ImageAnalyzer:
|
||
"""图片复杂度分析器"""
|
||
|
||
# 同一 URL 5 分钟内复用结果,节省 API 调用
|
||
_CACHE_TTL_SECONDS = 300
|
||
_analysis_cache: dict = {} # url -> (result_dict, timestamp)
|
||
|
||
PRICE_MAP = {
|
||
"simple": (10, 15, "画面简单干净"),
|
||
"normal": (15, 20, "一般复杂度"),
|
||
"complex": (20, 25, "细节偏多"),
|
||
"hard": (25, 30, "非常复杂"),
|
||
}
|
||
# 注意:含文字很多时,不能报 simple/normal 的低价,必须 complex 起步
|
||
|
||
def __init__(self):
|
||
self.api_key = os.getenv("OPENAI_API_KEY")
|
||
self.base_url = os.getenv("OPENAI_BASE_URL", "https://open.bigmodel.cn/api/paas/v4")
|
||
# 视觉模型,智谱 GLM-4V 系列
|
||
self.vision_model = os.getenv("VISION_MODEL", "glm-4v-flash")
|
||
|
||
def _is_url(self, image_path: str) -> bool:
|
||
return image_path.startswith("http://") or image_path.startswith("https://")
|
||
|
||
def _load_image_base64(self, image_path: str) -> Optional[str]:
|
||
"""本地图片转 base64"""
|
||
try:
|
||
with open(image_path, "rb") as f:
|
||
return base64.b64encode(f.read()).decode("utf-8")
|
||
except Exception as e:
|
||
print(f"[ImageAnalyzer] 读取图片失败: {e}")
|
||
return None
|
||
|
||
async def _get_image_size(self, image_path: str) -> Tuple[int, int]:
|
||
"""获取图片像素尺寸 (width, height),URL 或 本地路径"""
|
||
try:
|
||
if self._is_url(image_path):
|
||
timeout = aiohttp.ClientTimeout(total=10)
|
||
async with aiohttp.ClientSession(timeout=timeout) as session:
|
||
async with session.get(image_path) as resp:
|
||
if resp.status != 200:
|
||
return (0, 0)
|
||
data = await resp.read()
|
||
from io import BytesIO
|
||
with Image.open(BytesIO(data)) as img:
|
||
w, h = img.size
|
||
return (int(w), int(h))
|
||
else:
|
||
with Image.open(image_path) as img:
|
||
w, h = img.size
|
||
return (int(w), int(h))
|
||
except Exception as e:
|
||
print(f"[ImageAnalyzer] 获取尺寸失败: {e}")
|
||
return (0, 0)
|
||
|
||
# 最短等待时间(秒):即使AI极快返回,也等这么久,看起来像真人在找
|
||
MIN_WAIT_SECONDS = 4
|
||
|
||
DENSE_TEXT_SUBJECT_KEYWORDS = (
|
||
"宣传栏", "公告栏", "展板", "海报墙", "通知栏", "知识栏", "制度牌", "公示栏", "墙报", "密密麻麻",
|
||
"宣传海报", "知识海报", "科普海报", "防灾减灾", "宣传板", "宣传页",
|
||
"表格", "检索表", "配伍表", "药物配伍", "课程表", "流程表", "说明表", "数据表",
|
||
"word wall", "poster wall", "bulletin board",
|
||
)
|
||
MANY_FACES_SUBJECT_KEYWORDS = (
|
||
"多人", "多人脸", "人群", "群像", "合照", "集体照", "全家福", "毕业照", "婚礼合影", "大合照",
|
||
"crowd", "group photo", "many faces",
|
||
)
|
||
FORBIDDEN_CONTENT_KEYWORDS = (
|
||
# 党政/涉政
|
||
"党政", "涉政", "政治人物", "领导人", "国旗", "国徽", "党徽", "党旗", "时政宣传",
|
||
# 黄暴血腥
|
||
"黄色", "擦边", "裸露", "色情", "性暗示", "暴力", "凶杀", "打斗", "枪击", "血腥", "尸体", "虐待",
|
||
# 英文兜底
|
||
"political", "government propaganda", "nsfw", "porn", "nude", "violence", "bloody", "gore",
|
||
)
|
||
|
||
async def analyze(self, image_path: str) -> dict:
|
||
"""
|
||
异步分析图片复杂度(使用火山引擎 /responses 接口)。
|
||
实际等待时间 = max(视觉AI响应时间, MIN_WAIT_SECONDS)
|
||
|
||
Args:
|
||
image_path: 图片URL 或 本地路径
|
||
|
||
Returns:
|
||
{
|
||
"complexity": "simple|normal|complex|hard",
|
||
"reason": "原因描述",
|
||
"price_min": 最低报价,
|
||
"price_max": 最高报价,
|
||
"price_suggest": 建议报价,
|
||
"elapsed": 实际耗时秒数,
|
||
"success": True/False
|
||
}
|
||
"""
|
||
if not self.api_key:
|
||
await asyncio.sleep(self.MIN_WAIT_SECONDS)
|
||
return self._fallback("未配置 API Key")
|
||
|
||
# 缓存:仅对 URL 生效,本地路径不缓存
|
||
cache_key = image_path if self._is_url(image_path) else None
|
||
if cache_key:
|
||
now = time.monotonic()
|
||
cached = self._analysis_cache.get(cache_key)
|
||
if cached:
|
||
result, cached_at = cached
|
||
if now - cached_at < self._CACHE_TTL_SECONDS:
|
||
print(f"[ImageAnalyzer] 缓存命中 | URL 已分析过,跳过 API 调用")
|
||
result = dict(result)
|
||
result["elapsed"] = 0
|
||
return result
|
||
else:
|
||
del self._analysis_cache[cache_key]
|
||
|
||
start = time.monotonic()
|
||
|
||
try:
|
||
# 构建图片内容
|
||
if self._is_url(image_path):
|
||
image_item = {
|
||
"type": "input_image",
|
||
"image_url": image_path
|
||
}
|
||
else:
|
||
b64 = self._load_image_base64(image_path)
|
||
if not b64:
|
||
await asyncio.sleep(self.MIN_WAIT_SECONDS)
|
||
return self._fallback("图片读取失败")
|
||
image_item = {
|
||
"type": "input_image",
|
||
"image_url": f"data:image/jpeg;base64,{b64}"
|
||
}
|
||
|
||
# 使用火山引擎官方 SDK(AsyncOpenAI + /responses 接口)
|
||
client = AsyncOpenAI(
|
||
base_url=self.base_url,
|
||
api_key=self.api_key,
|
||
)
|
||
|
||
response = await client.responses.create(
|
||
model=self.vision_model,
|
||
input=[
|
||
{
|
||
"role": "user",
|
||
"content": [
|
||
image_item,
|
||
{
|
||
"type": "input_text",
|
||
"text": ANALYSIS_PROMPT
|
||
}
|
||
]
|
||
}
|
||
]
|
||
)
|
||
|
||
content = response.output_text
|
||
|
||
elapsed = time.monotonic() - start
|
||
print(f"[ImageAnalyzer] 视觉AI响应耗时: {elapsed:.1f}s")
|
||
|
||
await self._wait_remaining(elapsed)
|
||
|
||
result = self._parse_result(content)
|
||
result["elapsed"] = elapsed
|
||
|
||
# 计算尺寸与类型加价
|
||
try:
|
||
w, h = await self._get_image_size(image_path)
|
||
mp = round((w * h) / 1_000_000, 2) if w and h else 0.0
|
||
result["width"] = w
|
||
result["height"] = h
|
||
result["megapixels"] = mp
|
||
|
||
# 归一化类型
|
||
subj = (result.get("subject") or "").lower()
|
||
ptype = (result.get("proc_type") or "").lower()
|
||
ratio = result.get("aspect_ratio") or "1:1"
|
||
category = "general"
|
||
# 初步判断
|
||
if ("壁纸" in subj) or ("wallpaper" in subj) or ratio in ("9:16", "16:9"):
|
||
category = "wallpaper"
|
||
elif ("衣" in subj) or ("服" in subj) or ("印花" in subj) or ("fabric" in subj) or ("cloth" in subj) or ("服装" in subj) or ("印花" in ptype):
|
||
category = "clothing"
|
||
elif ("logo" in subj) or ("logo" in ptype):
|
||
category = "logo"
|
||
elif ("海报" in subj) or ("poster" in subj):
|
||
category = "poster"
|
||
elif ("人像" in subj) or ("人物" in subj) or ("portrait" in subj):
|
||
category = "portrait"
|
||
elif ("产品" in subj) or ("product" in subj):
|
||
category = "product"
|
||
elif ("老照片" in subj) or ("old photo" in subj):
|
||
category = "old_photo"
|
||
# 可印花/印刷物体扩展
|
||
keywords = subj + " " + ptype
|
||
if any(k in keywords for k in ["装饰画", "挂画", "油画", "canvas", "painting"]):
|
||
category = "decor_painting"
|
||
elif any(k in keywords for k in ["窗帘", "curtain"]):
|
||
category = "curtain"
|
||
elif any(k in keywords for k in ["地垫", "脚垫", "地毯", "垫", "mat", "rug"]):
|
||
category = "floor_mat"
|
||
elif any(k in keywords for k in ["广告牌", "喷绘", "展架", "灯箱", "banner", "billboard"]):
|
||
category = "billboard"
|
||
elif any(k in keywords for k in ["毯子", "毛毯", "blanket"]):
|
||
category = "blanket"
|
||
elif any(k in keywords for k in ["桌布", "台布", "tablecloth", "桌旗"]):
|
||
category = "tablecloth"
|
||
elif any(k in keywords for k in ["书本", "书籍", "封面", "book", "book cover"]):
|
||
category = "book"
|
||
elif any(k in keywords for k in ["鼠标垫", "mouse pad", "mousepad"]):
|
||
category = "mouse_pad"
|
||
elif any(k in keywords for k in ["头像", "个人头像", "个人照", "profile", "avatar"]):
|
||
category = "avatar"
|
||
result["category"] = category
|
||
|
||
surcharge = 0
|
||
size_note = ""
|
||
# 按类别设定尺寸要求与加价阈值(单位:百万像素)
|
||
if category == "wallpaper":
|
||
if h and h < 1920:
|
||
size_note = "壁纸高度低于1920px,清晰度可能不足"
|
||
if mp > 8:
|
||
surcharge = 10
|
||
elif mp > 3:
|
||
surcharge = 5
|
||
elif category == "clothing":
|
||
if (w and w < 1024) or (h and h < 1024):
|
||
size_note = "印花源图边长低于1024px,放大后细节可能不足"
|
||
if mp > 6:
|
||
surcharge = 10
|
||
elif mp > 2:
|
||
surcharge = 5
|
||
elif category in ("poster", "portrait", "product"):
|
||
if mp > 12:
|
||
surcharge = 10
|
||
elif mp > 6:
|
||
surcharge = 5
|
||
elif category == "logo":
|
||
if mp > 6:
|
||
surcharge = 5
|
||
elif category == "decor_painting":
|
||
if (w and w < 1500) or (h and h < 1500):
|
||
size_note = "装饰画边长低于1500px,打印放大可能不够清晰"
|
||
if mp > 12:
|
||
surcharge = 10
|
||
elif mp > 6:
|
||
surcharge = 5
|
||
elif category == "curtain":
|
||
if (w and w < 1500):
|
||
size_note = "窗帘宽度低于1500px,印花放大可能不够清晰"
|
||
if mp > 16:
|
||
surcharge = 10
|
||
elif mp > 8:
|
||
surcharge = 5
|
||
elif category == "floor_mat":
|
||
if mp > 12:
|
||
surcharge = 10
|
||
elif mp > 6:
|
||
surcharge = 5
|
||
elif category == "billboard":
|
||
if (w and w < 2000) or (h and h < 1000):
|
||
size_note = "广告牌尺寸较小,建议更高分辨率以保证喷绘清晰"
|
||
if mp > 20:
|
||
surcharge = 10
|
||
elif mp > 10:
|
||
surcharge = 5
|
||
elif category == "blanket":
|
||
if mp > 16:
|
||
surcharge = 10
|
||
elif mp > 8:
|
||
surcharge = 5
|
||
elif category == "tablecloth":
|
||
if mp > 12:
|
||
surcharge = 10
|
||
elif mp > 6:
|
||
surcharge = 5
|
||
elif category == "book":
|
||
if (w and w < 800):
|
||
size_note = "书本封面宽度低于800px,印刷细节可能不足"
|
||
if mp > 6:
|
||
surcharge = 5
|
||
elif category == "mouse_pad":
|
||
if (w and w < 1000):
|
||
size_note = "鼠标垫源图宽度低于1000px,细节可能不足"
|
||
if mp > 4:
|
||
surcharge = 5
|
||
elif category == "avatar":
|
||
if (w and w < 800) or (h and h < 800):
|
||
size_note = "头像边长低于800px,清晰度可能不足"
|
||
if mp > 6:
|
||
surcharge = 5
|
||
else:
|
||
if mp > 8:
|
||
surcharge = 10
|
||
elif mp > 4:
|
||
surcharge = 5
|
||
|
||
# 应用加价,保持5的整数倍与 10-30 区间
|
||
base = result.get("price_suggest", 20)
|
||
adjusted = base + surcharge
|
||
adjusted = max(10, min(30, adjusted))
|
||
adjusted = round(adjusted / 5) * 5
|
||
# 同步范围
|
||
result["price_suggest"] = adjusted
|
||
result["price_max"] = max(result["price_max"], adjusted)
|
||
result["size_surcharge"] = surcharge
|
||
result["size_note"] = size_note
|
||
except Exception as e:
|
||
print(f"[ImageAnalyzer] 尺寸与类型加价计算失败: {e}")
|
||
|
||
# 写入缓存
|
||
if cache_key:
|
||
self._analysis_cache[cache_key] = (dict(result), time.monotonic())
|
||
# 简单清理:缓存超过 50 条时删最旧的
|
||
if len(self._analysis_cache) > 50:
|
||
oldest = min(self._analysis_cache.items(), key=lambda x: x[1][1])
|
||
del self._analysis_cache[oldest[0]]
|
||
|
||
return result
|
||
|
||
except asyncio.TimeoutError:
|
||
elapsed = time.monotonic() - start
|
||
print(f"[ImageAnalyzer] 请求超时 ({elapsed:.1f}s)")
|
||
return self._fallback("请求超时")
|
||
except Exception as e:
|
||
elapsed = time.monotonic() - start
|
||
print(f"[ImageAnalyzer] 分析失败: {e}")
|
||
await self._wait_remaining(elapsed)
|
||
return self._fallback(str(e))
|
||
|
||
async def _wait_remaining(self, elapsed: float):
|
||
"""补足最短等待时间"""
|
||
remaining = self.MIN_WAIT_SECONDS - elapsed
|
||
if remaining > 0:
|
||
await asyncio.sleep(remaining)
|
||
|
||
def _parse_line(self, content: str, *keys: str) -> str:
|
||
"""从多行文本中提取指定字段值,支持中英文冒号"""
|
||
for line in content.strip().split("\n"):
|
||
line = line.strip()
|
||
for key in keys:
|
||
if line.startswith(key):
|
||
return line.split(":", 1)[-1].split(":", 1)[-1].strip()
|
||
return ""
|
||
|
||
def _parse_result(self, content: str) -> dict:
|
||
"""解析模型返回的结果"""
|
||
p = self._parse_line
|
||
|
||
# 复杂度
|
||
complexity_raw = p(content, "复杂度:", "复杂度:").lower()
|
||
complexity = complexity_raw if complexity_raw in self.PRICE_MAP else "normal"
|
||
|
||
sensitive = p(content, "敏感内容:", "敏感内容:").lower().strip()
|
||
flatness = p(content, "平整度:", "平整度:").lower().strip() # flat|mild|rough
|
||
has_text = p(content, "含文字:", "含文字:").lower().strip()
|
||
text_amount = p(content, "文字数量:", "文字数量:").strip()
|
||
text_layer_need = p(content, "文字分层需求:", "文字分层需求:").lower().strip()
|
||
has_face = p(content, "含人脸:", "含人脸:").lower().strip()
|
||
has_shadow = p(content, "阴影:", "阴影:").lower().strip()
|
||
reason = p(content, "原因:", "原因:")
|
||
subject = p(content, "主体:", "主体:")
|
||
proc_type = p(content, "类型:", "类型:")
|
||
quality = p(content, "质量:", "质量:")
|
||
feasibility = p(content, "可做:", "可做:").lower()
|
||
risk = p(content, "风险:", "风险:").lower().strip()
|
||
perspective = p(content, "透视:", "透视:").lower().strip()
|
||
aspect_ratio = p(content, "比例:", "比例:").strip()
|
||
gemini_prompt= p(content, "提示词:", "提示词:")
|
||
note = p(content, "备注:", "备注:")
|
||
|
||
if has_face not in ("yes", "no"):
|
||
has_face = "no"
|
||
valid_text_amounts = {"none", "少量 (1-10 字)", "中量 (11-50 字)", "大量 (51-200 字)", "极多 (200 字以上)"}
|
||
if text_amount not in valid_text_amounts:
|
||
text_amount = "none"
|
||
if text_layer_need not in ("yes", "no"):
|
||
text_layer_need = "no"
|
||
if risk not in ("none", "low", "high"):
|
||
risk = "none"
|
||
if perspective not in ("no", "mild", "strong"):
|
||
perspective = "no"
|
||
|
||
scene_text = ((subject or "") + " " + (proc_type or "") + " " + (reason or "") + " " + (note or "")).lower()
|
||
|
||
# 识别“密集文字场景”关键词(中文 + 英文兜底)
|
||
dense_text_scene = any(
|
||
kw in scene_text
|
||
for kw in self.DENSE_TEXT_SUBJECT_KEYWORDS
|
||
)
|
||
dense_text_hint = any(
|
||
kw in scene_text
|
||
for kw in ("密集文字", "大量文字", "小字", "多板块", "细字")
|
||
)
|
||
|
||
# 校验比例合法性
|
||
valid_ratios = {"1:1", "9:16", "16:9", "3:4", "4:3", "3:2", "2:3", "5:4", "4:5"}
|
||
if aspect_ratio not in valid_ratios:
|
||
aspect_ratio = "1:1" # 默认正方形
|
||
|
||
price_min, price_max, default_reason = self.PRICE_MAP[complexity]
|
||
if not reason:
|
||
reason = default_reason
|
||
if feasibility not in ("yes", "partial", "no"):
|
||
feasibility = "yes"
|
||
|
||
|
||
# 【重要】含文字很多时,不能低价,必须 complex 起步(20 元以上)
|
||
# 有文字跟没文字是两个价格
|
||
if has_text == "yes":
|
||
if complexity == "simple":
|
||
# 简单但含文字 → 提升到 normal 价格
|
||
price_min, price_max, _ = self.PRICE_MAP["normal"]
|
||
reason = "含文字,需精细处理"
|
||
elif complexity == "normal":
|
||
# normal 含文字 → 提升到 complex 价格
|
||
price_min, price_max, _ = self.PRICE_MAP["complex"]
|
||
reason = "含文字,需精细处理"
|
||
# complex/hard 保持原价,已经够高
|
||
# 建议报价:complex/hard 取固定值,simple/normal 取中间,且必须为5的整数倍
|
||
raw = price_max if complexity in ("complex", "hard") else (price_min + price_max) // 2
|
||
price_suggest = round(raw / 5) * 5
|
||
|
||
# 【文字数量加价】
|
||
text_surcharge = 0
|
||
if text_amount == "少量 (1-10 字)":
|
||
text_surcharge = 5
|
||
reason += " | 含少量文字"
|
||
elif text_amount == "中量 (11-50 字)":
|
||
text_surcharge = 15
|
||
reason += " | 含中量文字"
|
||
elif text_amount == "大量 (51-200 字)":
|
||
text_surcharge = 30
|
||
reason += " | 含大量文字"
|
||
elif text_amount == "极多 (200 字以上)":
|
||
text_surcharge = 50
|
||
reason += " | 含极多文字"
|
||
|
||
# 【文字分层需求加价】
|
||
layer_surcharge = 0
|
||
if text_layer_need == "yes":
|
||
if text_surcharge > 0:
|
||
# 有文字且需要分层 → 价格 x2 或 +50 元
|
||
layer_surcharge = max(50, price_suggest)
|
||
reason += " | 需要文字分层"
|
||
else:
|
||
# 无文字但需要分层 → +30 元
|
||
layer_surcharge = 30
|
||
reason += " | 需要分层文件"
|
||
|
||
# 加上文字加价
|
||
price_suggest += text_surcharge + layer_surcharge
|
||
|
||
# 【文字分层 + 大量文字】特殊处理 → 60-80 元
|
||
if text_amount in ["大量 (51-200 字)", "极多 (200 字以上)"] and text_layer_need == "yes":
|
||
if price_suggest < 60:
|
||
price_suggest = 60
|
||
elif price_suggest > 80:
|
||
price_suggest = 80
|
||
reason += " | 大量文字分层"
|
||
|
||
# 硬规则1:文字很多(>100)且密密麻麻不接单
|
||
text_gt_100 = text_amount in ["大量 (51-200 字)", "极多 (200 字以上)"]
|
||
dense_text_hard_reject = text_gt_100 or dense_text_scene or (has_text == "yes" and dense_text_hint)
|
||
if dense_text_hard_reject:
|
||
feasibility = "no"
|
||
risk = "high"
|
||
note = "文字内容过于密集(如宣传栏/公告栏),暂不接单处理"
|
||
reason = (reason or "文字密集") + " | 密集文字场景不接单"
|
||
price_suggest = 0
|
||
|
||
# 硬规则2:多人脸不接;1-2 人脸可做
|
||
many_faces_scene = any(k in scene_text for k in self.MANY_FACES_SUBJECT_KEYWORDS)
|
||
if has_face == "yes" and many_faces_scene:
|
||
feasibility = "no"
|
||
risk = "high"
|
||
note = "多人脸/群像场景处理风险高,暂不接单"
|
||
reason = (reason or "多人脸") + " | 多人脸场景不接单"
|
||
price_suggest = 0
|
||
|
||
# 硬规则3:党政/涉黄/暴力/血腥内容不接单
|
||
forbidden_scene = any(k in scene_text for k in self.FORBIDDEN_CONTENT_KEYWORDS)
|
||
sensitive_hit = str(sensitive or "").strip().lower() in ("yes", "true", "1", "是")
|
||
if forbidden_scene or sensitive_hit:
|
||
feasibility = "no"
|
||
risk = "high"
|
||
note = "含党政/涉黄/暴力/血腥等敏感内容,不接单"
|
||
reason = (reason or "敏感内容") + " | 敏感内容不接单"
|
||
price_suggest = 0
|
||
|
||
# 确保是 5 的倍数
|
||
price_suggest = round(price_suggest / 5) * 5
|
||
|
||
risk_label = {"none": "无风险", "low": "低风险", "high": "高风险"}.get(risk, "")
|
||
sens_tag = " | 敏感:是" if sensitive == "yes" else ""
|
||
print(f"[ImageAnalyzer] 识别结果: {complexity} | {reason} | 建议报价: {price_suggest}元{sens_tag}")
|
||
print(f"[ImageAnalyzer] 主体: {subject} | 类型: {proc_type} | 质量: {quality} | 平整度: {flatness} | 含文字: {has_text} | 含人脸: {has_face} | 阴影: {has_shadow} | 风险: {risk_label} | 透视: {perspective} | 比例: {aspect_ratio} | 可做: {feasibility}")
|
||
if gemini_prompt:
|
||
print(f"[ImageAnalyzer] Gemini提示词: {gemini_prompt}")
|
||
if note and note not in ("无", ""):
|
||
print(f"[ImageAnalyzer] 备注: {note}")
|
||
|
||
return {
|
||
"complexity": complexity,
|
||
"reason": reason,
|
||
"subject": subject,
|
||
"proc_type": proc_type,
|
||
"quality": quality,
|
||
"flatness": flatness if flatness in ("flat", "mild", "rough") else "",
|
||
"has_text": has_text if has_text in ("yes", "no") else "no",
|
||
"text_amount": text_amount,
|
||
"text_layer_need": text_layer_need,
|
||
"text_surcharge": text_surcharge,
|
||
"layer_surcharge": layer_surcharge,
|
||
"has_face": has_face, # yes / no
|
||
"has_shadow": has_shadow if has_shadow in ("yes", "no") else "no",
|
||
"risk": risk, # none / low / high
|
||
"feasibility": feasibility,
|
||
"perspective": perspective,
|
||
"aspect_ratio": aspect_ratio,
|
||
"gemini_prompt": gemini_prompt,
|
||
"note": note,
|
||
"price_min": price_min,
|
||
"price_max": price_max,
|
||
"price_suggest": price_suggest,
|
||
"success": True
|
||
}
|
||
|
||
def _fallback(self, reason: str) -> dict:
|
||
"""识别失败时的默认结果(返回 normal,让人工判断)"""
|
||
print(f"[ImageAnalyzer] 识别失败,使用默认值: {reason}")
|
||
text_amount = "none"
|
||
text_layer_need = "no"
|
||
text_surcharge = 0
|
||
layer_surcharge = 0
|
||
return {
|
||
"complexity": "normal",
|
||
"reason": reason,
|
||
"subject": "",
|
||
"proc_type": "",
|
||
"quality": "",
|
||
"flatness": "",
|
||
"has_text": "no",
|
||
"text_amount": text_amount,
|
||
"text_layer_need": text_layer_need,
|
||
"text_surcharge": text_surcharge,
|
||
"layer_surcharge": layer_surcharge,
|
||
"has_face": "no",
|
||
"has_shadow": "no",
|
||
"risk": "none",
|
||
"feasibility": "yes",
|
||
"perspective": "no",
|
||
"aspect_ratio": "1:1",
|
||
"gemini_prompt": "",
|
||
"note": "",
|
||
"price_min": 20,
|
||
"price_max": 30,
|
||
"price_suggest": 25,
|
||
"success": False
|
||
}
|
||
|
||
|
||
# 全局实例
|
||
image_analyzer = ImageAnalyzer()
|