blakeblackshear.frigate/frigate/api/review.py

576 lines
18 KiB
Python
Raw Permalink Normal View History

"""Review apis."""
import logging
from datetime import datetime, timedelta
from functools import reduce
from pathlib import Path
import pandas as pd
from flask import Blueprint, jsonify, make_response, request
from peewee import Case, DoesNotExist, fn, operator
from playhouse.shortcuts import model_to_dict
from frigate.models import Recordings, ReviewSegment
from frigate.util.builtin import get_tz_modifiers
logger = logging.getLogger(__name__)
ReviewBp = Blueprint("reviews", __name__)
@ReviewBp.route("/review")
def review():
cameras = request.args.get("cameras", "all")
labels = request.args.get("labels", "all")
zones = request.args.get("zones", "all")
reviewed = request.args.get("reviewed", type=int, default=0)
limit = request.args.get("limit", type=int, default=None)
severity = request.args.get("severity", None)
before = request.args.get("before", type=float, default=datetime.now().timestamp())
after = request.args.get(
"after", type=float, default=(datetime.now() - timedelta(hours=24)).timestamp()
)
clauses = [
(
(ReviewSegment.start_time > after)
& (
(ReviewSegment.end_time.is_null(True))
| (ReviewSegment.end_time < before)
)
)
]
if cameras != "all":
camera_list = cameras.split(",")
clauses.append((ReviewSegment.camera << camera_list))
if labels != "all":
# use matching so segments with multiple labels
# still match on a search where any label matches
label_clauses = []
filtered_labels = labels.split(",")
for label in filtered_labels:
label_clauses.append(
(ReviewSegment.data["objects"].cast("text") % f'*"{label}"*')
| (ReviewSegment.data["audio"].cast("text") % f'*"{label}"*')
)
label_clause = reduce(operator.or_, label_clauses)
clauses.append((label_clause))
if zones != "all":
# use matching so segments with multiple zones
# still match on a search where any zone matches
zone_clauses = []
filtered_zones = zones.split(",")
for zone in filtered_zones:
zone_clauses.append(
(ReviewSegment.data["zones"].cast("text") % f'*"{zone}"*')
)
zone_clause = reduce(operator.or_, zone_clauses)
clauses.append((zone_clause))
if reviewed == 0:
clauses.append((ReviewSegment.has_been_reviewed == False))
if severity:
clauses.append((ReviewSegment.severity == severity))
review = (
ReviewSegment.select()
.where(reduce(operator.and_, clauses))
.order_by(ReviewSegment.severity.asc())
.order_by(ReviewSegment.start_time.desc())
.limit(limit)
.dicts()
.iterator()
)
return jsonify([r for r in review])
@ReviewBp.route("/review/<id>")
def get_review(id: str):
try:
return model_to_dict(ReviewSegment.get(ReviewSegment.id == id))
except DoesNotExist:
return "Review item not found", 404
@ReviewBp.route("/review/summary")
def review_summary():
tz_name = request.args.get("timezone", default="utc", type=str)
hour_modifier, minute_modifier, seconds_offset = get_tz_modifiers(tz_name)
day_ago = (datetime.now() - timedelta(hours=24)).timestamp()
month_ago = (datetime.now() - timedelta(days=30)).timestamp()
cameras = request.args.get("cameras", "all")
labels = request.args.get("labels", "all")
zones = request.args.get("zones", "all")
clauses = [(ReviewSegment.start_time > day_ago)]
if cameras != "all":
camera_list = cameras.split(",")
clauses.append((ReviewSegment.camera << camera_list))
if labels != "all":
# use matching so segments with multiple labels
# still match on a search where any label matches
label_clauses = []
filtered_labels = labels.split(",")
for label in filtered_labels:
label_clauses.append(
(ReviewSegment.data["objects"].cast("text") % f'*"{label}"*')
| (ReviewSegment.data["audio"].cast("text") % f'*"{label}"*')
)
label_clause = reduce(operator.or_, label_clauses)
clauses.append((label_clause))
if zones != "all":
# use matching so segments with multiple zones
# still match on a search where any zone matches
zone_clauses = []
filtered_zones = zones.split(",")
for zone in filtered_zones:
zone_clauses.append(
(ReviewSegment.data["zones"].cast("text") % f'*"{zone}"*')
)
zone_clause = reduce(operator.or_, zone_clauses)
clauses.append((zone_clause))
last_24 = (
ReviewSegment.select(
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "alert"),
ReviewSegment.has_been_reviewed,
)
],
0,
)
).alias("reviewed_alert"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "detection"),
ReviewSegment.has_been_reviewed,
)
],
0,
)
).alias("reviewed_detection"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "significant_motion"),
ReviewSegment.has_been_reviewed,
)
],
0,
)
).alias("reviewed_motion"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "alert"),
1,
)
],
0,
)
).alias("total_alert"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "detection"),
1,
)
],
0,
)
).alias("total_detection"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "significant_motion"),
1,
)
],
0,
)
).alias("total_motion"),
)
.where(reduce(operator.and_, clauses))
.dicts()
.get()
)
clauses = [(ReviewSegment.start_time > month_ago)]
if cameras != "all":
camera_list = cameras.split(",")
clauses.append((ReviewSegment.camera << camera_list))
if labels != "all":
# use matching so segments with multiple labels
# still match on a search where any label matches
label_clauses = []
filtered_labels = labels.split(",")
for label in filtered_labels:
label_clauses.append(
(ReviewSegment.data["objects"].cast("text") % f'*"{label}"*')
)
label_clause = reduce(operator.or_, label_clauses)
clauses.append((label_clause))
last_month = (
ReviewSegment.select(
fn.strftime(
"%Y-%m-%d",
fn.datetime(
ReviewSegment.start_time,
"unixepoch",
hour_modifier,
minute_modifier,
),
).alias("day"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "alert"),
ReviewSegment.has_been_reviewed,
)
],
0,
)
).alias("reviewed_alert"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "detection"),
ReviewSegment.has_been_reviewed,
)
],
0,
)
).alias("reviewed_detection"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "significant_motion"),
ReviewSegment.has_been_reviewed,
)
],
0,
)
).alias("reviewed_motion"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "alert"),
1,
)
],
0,
)
).alias("total_alert"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "detection"),
1,
)
],
0,
)
).alias("total_detection"),
fn.SUM(
Case(
None,
[
(
(ReviewSegment.severity == "significant_motion"),
1,
)
],
0,
)
).alias("total_motion"),
)
.where(reduce(operator.and_, clauses))
.group_by(
(ReviewSegment.start_time + seconds_offset).cast("int") / (3600 * 24),
)
.order_by(ReviewSegment.start_time.desc())
)
data = {
"last24Hours": last_24,
}
for e in last_month.dicts().iterator():
data[e["day"]] = e
return jsonify(data)
@ReviewBp.route("/reviews/viewed", methods=("POST",))
def set_multiple_reviewed():
json: dict[str, any] = request.get_json(silent=True) or {}
list_of_ids = json.get("ids", "")
if not list_of_ids or len(list_of_ids) == 0:
return make_response(
jsonify({"success": False, "message": "Not a valid list of ids"}), 404
)
ReviewSegment.update(has_been_reviewed=True).where(
ReviewSegment.id << list_of_ids
).execute()
return make_response(
jsonify({"success": True, "message": "Reviewed multiple items"}), 200
)
@ReviewBp.route("/review/<id>/viewed", methods=("DELETE",))
def set_not_reviewed(id):
try:
review: ReviewSegment = ReviewSegment.get(ReviewSegment.id == id)
except DoesNotExist:
return make_response(
jsonify({"success": False, "message": "Review " + id + " not found"}), 404
)
review.has_been_reviewed = False
review.save()
return make_response(
jsonify({"success": True, "message": "Reviewed " + id + " not viewed"}), 200
)
@ReviewBp.route("/reviews/delete", methods=("POST",))
def delete_reviews():
json: dict[str, any] = request.get_json(silent=True) or {}
list_of_ids = json.get("ids", "")
if not list_of_ids or len(list_of_ids) == 0:
return make_response(
jsonify({"success": False, "message": "Not a valid list of ids"}), 404
)
reviews = (
ReviewSegment.select(
ReviewSegment.camera,
ReviewSegment.start_time,
ReviewSegment.end_time,
)
.where(ReviewSegment.id << list_of_ids)
.dicts()
.iterator()
)
recording_ids = []
for review in reviews:
start_time = review["start_time"]
end_time = review["end_time"]
camera_name = review["camera"]
recordings = (
Recordings.select(Recordings.id, Recordings.path)
.where(
Recordings.start_time.between(start_time, end_time)
| Recordings.end_time.between(start_time, end_time)
| (
(start_time > Recordings.start_time)
& (end_time < Recordings.end_time)
)
)
.where(Recordings.camera == camera_name)
.dicts()
.iterator()
)
for recording in recordings:
Path(recording["path"]).unlink(missing_ok=True)
recording_ids.append(recording["id"])
# delete recordings and review segments
Recordings.delete().where(Recordings.id << recording_ids).execute()
ReviewSegment.delete().where(ReviewSegment.id << list_of_ids).execute()
return make_response(jsonify({"success": True, "message": "Delete reviews"}), 200)
@ReviewBp.route("/review/activity/motion")
def motion_activity():
"""Get motion and audio activity."""
cameras = request.args.get("cameras", "all")
before = request.args.get("before", type=float, default=datetime.now().timestamp())
after = request.args.get(
"after", type=float, default=(datetime.now() - timedelta(hours=1)).timestamp()
)
clauses = [(Recordings.start_time > after) & (Recordings.end_time < before)]
clauses.append((Recordings.motion > 0))
if cameras != "all":
camera_list = cameras.split(",")
clauses.append((Recordings.camera << camera_list))
data: list[Recordings] = (
Recordings.select(
Recordings.camera,
Recordings.start_time,
Recordings.motion,
)
.where(reduce(operator.and_, clauses))
.order_by(Recordings.start_time.asc())
.dicts()
.iterator()
)
# get scale in seconds
scale = request.args.get("scale", type=int, default=30)
# resample data using pandas to get activity on scaled basis
df = pd.DataFrame(data, columns=["start_time", "motion", "camera"])
if df.empty:
logger.warning("No motion data found for the requested time range")
return jsonify([])
df = df.astype(dtype={"motion": "float32"})
# set date as datetime index
df["start_time"] = pd.to_datetime(df["start_time"], unit="s")
df.set_index(["start_time"], inplace=True)
# normalize data
motion = (
df["motion"]
.resample(f"{scale}s")
.apply(lambda x: max(x, key=abs, default=0.0))
.fillna(0.0)
.to_frame()
)
cameras = df["camera"].resample(f"{scale}s").agg(lambda x: ",".join(set(x)))
df = motion.join(cameras)
length = df.shape[0]
chunk = int(60 * (60 / scale))
for i in range(0, length, chunk):
part = df.iloc[i : i + chunk]
min_val, max_val = part["motion"].min(), part["motion"].max()
if min_val != max_val:
df.iloc[i : i + chunk, 0] = (
part["motion"].sub(min_val).div(max_val - min_val).mul(100).fillna(0)
)
else:
df.iloc[i : i + chunk, 0] = 0.0
# change types for output
df.index = df.index.astype(int) // (10**9)
normalized = df.reset_index().to_dict("records")
return jsonify(normalized)
@ReviewBp.route("/review/activity/audio")
def audio_activity():
"""Get motion and audio activity."""
cameras = request.args.get("cameras", "all")
before = request.args.get("before", type=float, default=datetime.now().timestamp())
after = request.args.get(
"after", type=float, default=(datetime.now() - timedelta(hours=1)).timestamp()
)
clauses = [(Recordings.start_time > after) & (Recordings.end_time < before)]
if cameras != "all":
camera_list = cameras.split(",")
clauses.append((Recordings.camera << camera_list))
all_recordings: list[Recordings] = (
Recordings.select(
Recordings.start_time,
Recordings.duration,
Recordings.objects,
Recordings.dBFS,
)
.where(reduce(operator.and_, clauses))
.order_by(Recordings.start_time.asc())
.iterator()
)
# format is: { timestamp: segment_start_ts, motion: [0-100], audio: [0 - -100] }
# periods where active objects / audio was detected will cause audio to be scaled down
data: list[dict[str, float]] = []
for rec in all_recordings:
data.append(
{
"start_time": rec.start_time,
"audio": rec.dBFS if rec.objects == 0 else 0,
}
)
# get scale in seconds
scale = request.args.get("scale", type=int, default=30)
# resample data using pandas to get activity on scaled basis
df = pd.DataFrame(data, columns=["start_time", "audio"])
df = df.astype(dtype={"audio": "float16"})
# set date as datetime index
df["start_time"] = pd.to_datetime(df["start_time"], unit="s")
df.set_index(["start_time"], inplace=True)
# normalize data
df = df.resample(f"{scale}S").mean().fillna(0.0)
df["audio"] = (
(df["audio"] - df["audio"].max())
/ (df["audio"].min() - df["audio"].max())
* -100
)
# change types for output
df.index = df.index.astype(int) // (10**9)
normalized = df.reset_index().to_dict("records")
return jsonify(normalized)