The Gore & Disgusting model helps you determine if an image or video contains gore, horrific or disgusting imagery such as blood, guts, wounds, corpses, skulls and more.
The output of the model is provided in 10 gore classes to help you determine what kind of depiction is in the image or video, and 3 type classes:
Gore classes | Very bloody | very_bloody |
Slightly bloody | slightly_bloody | |
Body organ | body_organ | |
Serious injury | serious_injury | |
Superficial injury | superficial_injury | |
Corpse | corpse | |
Skull | skull | |
Unconscious | unconscious | |
Body waste | body_waste | |
Other | other | |
Gore type | Animated gore | animated |
Fake gore | fake | |
Real gore | real |
The following 3 models can provide a useful complement to the gore model:
This does not include blood in a medical context, such as blood tests, blood donations, or blood transfusions.
This does not include blood in a medical context, such as blood tests, blood donations, or blood transfusions.
See the unconscious class for cases where the person is assumed to be alive but unconscious. See the serious_injury class for graphic injuries where the person is visibly alive.
This does not include people visibly dead (see corpse class) or having injuries (see serious_injury class).
Please reach out if you need to differentiate between different aspects within this other class.
The Gore type section can be used to differentiate fake gore content from real gore content and gore content appearing in art or illustrations.
Realistic movie scenes will be flagged as real gore and not as fake gore.
If you haven't already, create an account to get your own API keys.
Let's say you want to moderate the following image:
You can either share a URL to the image, or upload the raw binary image.
Here's how to proceed if you choose to share the image URL:
curl -X GET -G 'https://api.sightengine.com/1.0/check.json' \
-d 'models=gore-2.0' \
-d 'api_user={api_user}&api_secret={api_secret}' \
--data-urlencode 'url=https://sightengine.com/assets/img/examples/example-fac-1000.jpg'
# this example uses requests
import requests
import json
params = {
'url': 'https://sightengine.com/assets/img/examples/example-fac-1000.jpg',
'models': 'gore-2.0',
'api_user': '{api_user}',
'api_secret': '{api_secret}'
}
r = requests.get('https://api.sightengine.com/1.0/check.json', params=params)
output = json.loads(r.text)
$params = array(
'url' => 'https://sightengine.com/assets/img/examples/example-fac-1000.jpg',
'models' => 'gore-2.0',
'api_user' => '{api_user}',
'api_secret' => '{api_secret}',
);
// this example uses cURL
$ch = curl_init('https://api.sightengine.com/1.0/check.json?'.http_build_query($params));
curl_setopt($ch, CURLOPT_RETURNTRANSFER, true);
$response = curl_exec($ch);
curl_close($ch);
$output = json_decode($response, true);
// this example uses axios
const axios = require('axios');
axios.get('https://api.sightengine.com/1.0/check.json', {
params: {
'url': 'https://sightengine.com/assets/img/examples/example-fac-1000.jpg',
'models': 'gore-2.0',
'api_user': '{api_user}',
'api_secret': '{api_secret}',
}
})
.then(function (response) {
// on success: handle response
console.log(response.data);
})
.catch(function (error) {
// handle error
if (error.response) console.log(error.response.data);
else console.log(error.message);
});
See request parameter description
Parameter | Type | Description |
media | binary | image to analyze |
models | string | comma-separated list of models to apply |
api_user | string | your API user id |
api_secret | string | your API secret |
Here's how to proceed if you choose to upload the raw image:
curl -X POST 'https://api.sightengine.com/1.0/check.json' \
-F 'media=@/path/to/image.jpg' \
-F 'models=gore-2.0' \
-F 'api_user={api_user}' \
-F 'api_secret={api_secret}'
# this example uses requests
import requests
import json
params = {
'models': 'gore-2.0',
'api_user': '{api_user}',
'api_secret': '{api_secret}'
}
files = {'media': open('/path/to/image.jpg', 'rb')}
r = requests.post('https://api.sightengine.com/1.0/check.json', files=files, data=params)
output = json.loads(r.text)
$params = array(
'media' => new CurlFile('/path/to/image.jpg'),
'models' => 'gore-2.0',
'api_user' => '{api_user}',
'api_secret' => '{api_secret}',
);
// this example uses cURL
$ch = curl_init('https://api.sightengine.com/1.0/check.json');
curl_setopt($ch, CURLOPT_POST, true);
curl_setopt($ch, CURLOPT_RETURNTRANSFER, true);
curl_setopt($ch, CURLOPT_POSTFIELDS, $params);
$response = curl_exec($ch);
curl_close($ch);
$output = json_decode($response, true);
// this example uses axios and form-data
const axios = require('axios');
const FormData = require('form-data');
const fs = require('fs');
data = new FormData();
data.append('media', fs.createReadStream('/path/to/image.jpg'));
data.append('models', 'gore-2.0');
data.append('api_user', '{api_user}');
data.append('api_secret', '{api_secret}');
axios({
method: 'post',
url:'https://api.sightengine.com/1.0/check.json',
data: data,
headers: data.getHeaders()
})
.then(function (response) {
// on success: handle response
console.log(response.data);
})
.catch(function (error) {
// handle error
if (error.response) console.log(error.response.data);
else console.log(error.message);
});
See request parameter description
Parameter | Type | Description |
media | binary | image to analyze |
models | string | comma-separated list of models to apply |
api_user | string | your API user id |
api_secret | string | your API secret |
The API will then return a JSON response with the following structure:
{
"status": "success",
"request": {
"id": "req_glra5CGwKiJOgQIKG2xMe",
"timestamp": 1716968170.907796,
"operations": 1
},
"gore": {
"prob": 0.01,
"classes": {
"very_bloody": 0.01,
"slightly_bloody": 0.01,
"body_organ": 0.01,
"serious_injury": 0.01,
"superficial_injury": 0.01,
"corpse": 0.01,
"skull": 0.01,
"unconscious": 0.01,
"body_waste": 0.01,
"other": 0.01
},
"type": {
"animated": 0.01,
"fake": 0.01,
"real": 0.01
}
},
"media": {
"id": "med_glra5aI8HdK23yzRwsWjs",
"uri": "https://sightengine.com/assets/img/examples/example-fac-1000.jpg"
}
}
Here's how to proceed to analyze a short video (less than 1 minute):
curl -X POST 'https://api.sightengine.com/1.0/video/check-sync.json' \
-F 'media=@/path/to/video.mp4' \
-F 'models=gore-2.0' \
-F 'api_user={api_user}' \
-F 'api_secret={api_secret}'
# this example uses requests
import requests
import json
params = {
# specify the models you want to apply
'models': 'gore-2.0',
'api_user': '{api_user}',
'api_secret': '{api_secret}'
}
files = {'media': open('/path/to/video.mp4', 'rb')}
r = requests.post('https://api.sightengine.com/1.0/video/check-sync.json', files=files, data=params)
output = json.loads(r.text)
$params = array(
'media' => new CurlFile('/path/to/video.mp4'),
// specify the models you want to apply
'models' => 'gore-2.0',
'api_user' => '{api_user}',
'api_secret' => '{api_secret}',
);
// this example uses cURL
$ch = curl_init('https://api.sightengine.com/1.0/video/check-sync.json');
curl_setopt($ch, CURLOPT_POST, true);
curl_setopt($ch, CURLOPT_RETURNTRANSFER, true);
curl_setopt($ch, CURLOPT_POSTFIELDS, $params);
$response = curl_exec($ch);
curl_close($ch);
$output = json_decode($response, true);
// this example uses axios and form-data
const axios = require('axios');
const FormData = require('form-data');
const fs = require('fs');
data = new FormData();
data.append('media', fs.createReadStream('/path/to/video.mp4'));
// specify the models you want to apply
data.append('models', 'gore-2.0');
data.append('api_user', '{api_user}');
data.append('api_secret', '{api_secret}');
axios({
method: 'post',
url:'https://api.sightengine.com/1.0/video/check-sync.json',
data: data,
headers: data.getHeaders()
})
.then(function (response) {
// on success: handle response
console.log(response.data);
})
.catch(function (error) {
// handle error
if (error.response) console.log(error.response.data);
else console.log(error.message);
});
See request parameter description
Parameter | Type | Description |
media | binary | image to analyze |
models | string | comma-separated list of models to apply |
interval | float | frame interval in seconds, out of 0.5, 1, 2, 3, 4, 5 (optional) |
api_user | string | your API user id |
api_secret | string | your API secret |
Here's how to proceed to analyze a long video. Note that if the video file is very large, you might first need to upload it through the Upload API.
curl -X POST 'https://api.sightengine.com/1.0/video/check.json' \
-F 'media=@/path/to/video.mp4' \
-F 'models=gore-2.0' \
-F 'callback_url=https://yourcallback/path' \
-F 'api_user={api_user}' \
-F 'api_secret={api_secret}'
# this example uses requests
import requests
import json
params = {
# specify the models you want to apply
'models': 'gore-2.0',
# specify where you want to receive result callbacks
'callback_url': 'https://yourcallback/path',
'api_user': '{api_user}',
'api_secret': '{api_secret}'
}
files = {'media': open('/path/to/video.mp4', 'rb')}
r = requests.post('https://api.sightengine.com/1.0/video/check.json', files=files, data=params)
output = json.loads(r.text)
$params = array(
'media' => new CurlFile('/path/to/video.mp4'),
// specify the models you want to apply
'models' => 'gore-2.0',
// specify where you want to receive result callbacks
'callback_url' => 'https://yourcallback/path',
'api_user' => '{api_user}',
'api_secret' => '{api_secret}',
);
// this example uses cURL
$ch = curl_init('https://api.sightengine.com/1.0/video/check.json');
curl_setopt($ch, CURLOPT_POST, true);
curl_setopt($ch, CURLOPT_RETURNTRANSFER, true);
curl_setopt($ch, CURLOPT_POSTFIELDS, $params);
$response = curl_exec($ch);
curl_close($ch);
$output = json_decode($response, true);
// this example uses axios and form-data
const axios = require('axios');
const FormData = require('form-data');
const fs = require('fs');
data = new FormData();
data.append('media', fs.createReadStream('/path/to/video.mp4'));
// specify the models you want to apply
data.append('models', 'gore-2.0');
// specify where you want to receive result callbacks
data.append('callback_url', 'https://yourcallback/path');
data.append('api_user', '{api_user}');
data.append('api_secret', '{api_secret}');
axios({
method: 'post',
url:'https://api.sightengine.com/1.0/video/check.json',
data: data,
headers: data.getHeaders()
})
.then(function (response) {
// on success: handle response
console.log(response.data);
})
.catch(function (error) {
// handle error
if (error.response) console.log(error.response.data);
else console.log(error.message);
});
See request parameter description
Parameter | Type | Description |
media | binary | image to analyze |
callback_url | string | callback URL to receive moderation updates (optional) |
models | string | comma-separated list of models to apply |
interval | float | frame interval in seconds, out of 0.5, 1, 2, 3, 4, 5 (optional) |
api_user | string | your API user id |
api_secret | string | your API secret |
Here's how to proceed to analyze a live-stream:
curl -X GET -G 'https://api.sightengine.com/1.0/video/check.json' \
--data-urlencode 'stream_url=https://domain.tld/path/video.m3u8' \
-d 'models=gore-2.0' \
-d 'callback_url=https://your.callback.url/path' \
-d 'api_user={api_user}' \
-d 'api_secret={api_secret}'
# if you haven't already, install the SDK with 'pip install sightengine'
from sightengine.client import SightengineClient
client = SightengineClient('{api_user}','{api_secret}')
output = client.check('gore-2.0').video('https://domain.tld/path/video.m3u8', 'https://your.callback.url/path')
// if you haven't already, install the SDK with 'composer require sightengine/client-php'
use \Sightengine\SightengineClient;
$client = new SightengineClient('{api_user}','{api_secret}');
$output = $client->check(['gore-2.0'])->video('https://domain.tld/path/video.m3u8', 'https://your.callback.url/path');
// if you haven't already, install the SDK with 'npm install sightengine --save'
var sightengine = require('sightengine')('{api_user}', '{api_secret}');
sightengine.check(['gore-2.0']).video('https://domain.tld/path/video.m3u8', 'https://your.callback.url/path').then(function(result) {
// The API response (result)
}).catch(function(err) {
// Handle error
});
See request parameter description
Parameter | Type | Description |
stream_url | string | URL of the video stream |
callback_url | string | callback URL to receive moderation updates (optional) |
models | string | comma-separated list of models to apply |
interval | float | frame interval in seconds, out of 0.5, 1, 2, 3, 4, 5 (optional) |
api_user | string | your API user id |
api_secret | string | your API secret |
The Moderation result will be provided either directly in the request response (for sync calls, see below) or through the callback URL your provided (for async calls).
Here is the structure of the JSON response with moderation results for each analyzed frame under the data.frames array:
{
"status": "success",
"request": {
"id": "req_gmgHNy8oP6nvXYaJVLq9n",
"timestamp": 1717159864.348989,
"operations": 21
},
"data": {
"frames": [
{
"info": {
"id": "med_gmgHcUOwe41rWmqwPhVNU_1",
"position": 0
},
"gore": {
"prob": 0.01,
"classes": {
"very_bloody": 0.01,
"slightly_bloody": 0.01,
"body_organ": 0.01,
"serious_injury": 0.01,
"superficial_injury": 0.01,
"corpse": 0.01,
"skull": 0.01,
"unconscious": 0.01,
"body_waste": 0.01,
"other": 0.01
},
"type": {
"animated": 0.01,
"fake": 0.01,
"real": 0.01
}
},
},
...
]
},
"media": {
"id": "med_gmgHcUOwe41rWmqwPhVNU",
"uri": "yourfile.mp4"
},
}
You can use the classes under the gore object to determine the gore level of the video.
See our full list of Image/Video models for details on other filters and checks you can run on your images and videos. You might also want to check our Text models to moderate text-based content: messages, reviews, comments, usernames...
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