Files
AiDA_Python/app/service/design/items/pipelines/keypoints.py

140 lines
6.2 KiB
Python
Raw Normal View History

2024-05-28 15:22:11 +08:00
import logging
import time
2024-06-21 17:13:39 +08:00
2024-05-28 15:22:11 +08:00
import numpy as np
from pymilvus import MilvusClient
from app.core.config import *
from ..builder import PIPELINES
from ...utils.design_ensemble import get_keypoint_result
@PIPELINES.register_module()
class KeypointDetection(object):
"""
path here: abstract path
"""
2024-06-17 16:42:33 +08:00
# def __init__(self):
# self.client = MilvusClient(
# uri="http://10.1.1.240:19530",
# token="root:Milvus",
# db_name=MILVUS_ALIAS
# )
2024-05-28 15:22:11 +08:00
2024-06-17 16:42:33 +08:00
# def __del__(self):
# start_time = time.time()
# self.client.close()
# print(f"client close time : {time.time() - start_time}")
2024-05-28 15:22:11 +08:00
# @ RunTime
def __call__(self, result):
# logging.info("KeypointDetection run ")
if result['name'] in ['blouse', 'skirt', 'dress', 'outwear', 'trousers', 'tops', 'bottoms']: # 查询是否有数据 且类别相同 相同则直接读 不同则推理后更新
# result['clothes_keypoint'] = self.infer_keypoint_result(result)
site = 'up' if result['name'] in ['blouse', 'outwear', 'dress', 'tops'] else 'down'
# keypoint_cache = search_keypoint_cache(result["image_id"], site)
2024-06-19 10:53:11 +08:00
keypoint_cache = self.keypoint_cache(result, site)
2024-05-30 09:48:13 +08:00
# 取消向量查询 直接过模型推理
2024-06-19 10:53:11 +08:00
# keypoint_cache = False
2024-05-28 15:22:11 +08:00
if keypoint_cache is False:
keypoint_infer_result, site = self.infer_keypoint_result(result)
result['clothes_keypoint'] = self.save_keypoint_cache(result["image_id"], keypoint_infer_result, site)
else:
result['clothes_keypoint'] = keypoint_cache
return result
@staticmethod
def infer_keypoint_result(result):
site = 'up' if result['name'] in ['blouse', 'outwear', 'dress', 'tops'] else 'down'
start_time = time.time()
keypoint_infer_result = get_keypoint_result(result["image"], site) # 推理结果
# logging.info(f"infer keypoint time : {time.time() - start_time}")
return keypoint_infer_result, site
@staticmethod
# @ RunTime
2024-06-17 17:34:57 +08:00
def save_keypoint_cache(keypoint_id, cache, site):
2024-05-28 15:22:11 +08:00
if site == "down":
zeros = np.zeros(20, dtype=int)
result = np.concatenate([zeros, cache.flatten()])
else:
zeros = np.zeros(4, dtype=int)
result = np.concatenate([cache.flatten(), zeros])
# 取消向量保存 直接拿结果
data = [
{"keypoint_id": keypoint_id,
"keypoint_site": site,
"keypoint_vector": result.tolist()
}
]
try:
2024-06-17 16:42:33 +08:00
client = MilvusClient(uri=MILVUS_URL, token=MILVUS_TOKEN, db_name=MILVUS_ALIAS)
2024-06-21 17:13:39 +08:00
# start_time = time.time()
res = client.upsert(collection_name=MILVUS_TABLE_KEYPOINT, data=data)
2024-05-28 15:22:11 +08:00
# logging.info(f"save keypoint time : {time.time() - start_time}")
2024-06-17 16:42:33 +08:00
client.close()
2024-05-28 15:22:11 +08:00
return dict(zip(KEYPOINT_RESULT_TABLE_FIELD_SET, result.reshape(12, 2).astype(int).tolist()))
except Exception as e:
logging.info(f"save keypoint cache milvus error : {e}")
return dict(zip(KEYPOINT_RESULT_TABLE_FIELD_SET, result.reshape(12, 2).astype(int).tolist()))
@staticmethod
def update_keypoint_cache(keypoint_id, infer_result, search_result, site):
if site == "up":
# 需要的是up 即推理出来的是up 那么查询的就是down
result = np.concatenate([infer_result.flatten(), search_result[-4:]])
else:
# 需要的是down 即推理出来的是down 那么查询的就是up
result = np.concatenate([search_result[:20], infer_result.flatten()])
data = [
{"keypoint_id": keypoint_id,
"keypoint_site": "all",
"keypoint_vector": result.tolist()
}
]
2024-06-17 16:42:33 +08:00
2024-05-28 15:22:11 +08:00
try:
2024-06-17 16:42:33 +08:00
client = MilvusClient(uri=MILVUS_URL, token=MILVUS_TOKEN, db_name=MILVUS_ALIAS)
2024-05-28 15:22:11 +08:00
# connections.connect(alias=MILVUS_ALIAS, host=MILVUS_DB_HOST, port=MILVUS_PORT)
start_time = time.time()
# collection = Collection(MILVUS_TABLE_KEYPOINT) # Get an existing collection.
# mr = collection.upsert(data)
client.upsert(
collection_name=MILVUS_TABLE_KEYPOINT,
data=data
)
# logging.info(f"save keypoint time : {time.time() - start_time}")
return dict(zip(KEYPOINT_RESULT_TABLE_FIELD_SET, result.reshape(12, 2).astype(int).tolist()))
except Exception as e:
logging.info(f"save keypoint cache milvus error : {e}")
return dict(zip(KEYPOINT_RESULT_TABLE_FIELD_SET, result.reshape(12, 2).astype(int).tolist()))
# @ RunTime
def keypoint_cache(self, result, site):
try:
2024-06-17 16:42:33 +08:00
client = MilvusClient(uri=MILVUS_URL, token=MILVUS_TOKEN, db_name=MILVUS_ALIAS)
2024-05-28 15:22:11 +08:00
keypoint_id = result['image_id']
2024-06-17 16:42:33 +08:00
res = client.query(
2024-05-28 15:22:11 +08:00
collection_name=MILVUS_TABLE_KEYPOINT,
# ids=[keypoint_id],
filter=f"keypoint_id == {keypoint_id}",
output_fields=['keypoint_vector', 'keypoint_site']
)
if len(res) == 0:
# 没有结果 直接推理拿结果 并保存
keypoint_infer_result, site = self.infer_keypoint_result(result)
return self.save_keypoint_cache(result['image_id'], keypoint_infer_result, site)
elif res[0]["keypoint_site"] == "all" or res[0]["keypoint_site"] == site:
# 需要的类型和查询的类型一致或者查询的类型为all 则直接返回查询的结果
return dict(zip(KEYPOINT_RESULT_TABLE_FIELD_SET, np.array(res[0]['keypoint_vector']).astype(int).reshape(12, 2).tolist()))
elif res[0]["keypoint_site"] != site:
# 需要的类型和查询到的不一致则更新类型为all
keypoint_infer_result, site = self.infer_keypoint_result(result)
return self.update_keypoint_cache(result["image_id"], keypoint_infer_result, res[0]['keypoint_vector'], site)
except Exception as e:
logging.info(f"search keypoint cache milvus error {e}")
return False