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Source channel @olddriverGDstudy · Post #51 · Mar 24

#上头诫#知识 噫吁嚱,呜呼哀哉。佳丽之心, 如渊似海云雾间。前有鬼者心有属,今有上将四人间。心似骄阳深似火,怎当白桓是真心。柳间戏水不得喻,错将弱颜当磐石。今日不见凄鬼之心散步言语现,此时却如千万金石尽如吼头甜。千言万语悬浮脑海间,百转千回纠缠心火炼。上将游戏四水间,怎奈四水通流涧。不得可可不得乖,碧水深潭心坏怜。心知真己不觉少,奈何四水风见消。索向索梁不觉走,回神已在深涧见。深涧云气鬼雾袅,崖山悬顶有佳囡。云烟做红霞,鬼雾做红妆。似是云波似是锦,可文鬼泣是有心。东升日出朝阳起,云散无效鬼泪去。不知南柯曾觉晓,梦里梦外梦惺惺。囡囡心念念,鬼鬼向戚戚。柳七窃窃似潇潇,新年却已入人牢。谁知何时却明晓,涉水不足总深腰。无问无知无所念,有情有景有春宵。尽知尽晓秀哥谣,不管不顾十诫飘。愿此流真做悲景,莫要上头惹人笑。

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Search: #detection

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Universe Mysteries 🪐

@cosmomyst · Post #705 · 03/08/2026, 10:21 PM

🪐 In 2019, the asteroid 2019 OK startled astronomers when it was detected passing just 70,000 kilometers from Earth—less than a fifth of the distance to the Moon. This city-sized object, about 100 meters wide, slipped by with very little warning, highlighting how some space threats can go undetected until they're nearly upon us, and why vigilance is vital for discovering near-Earth objects in time. ✨ #asteroids⚡#nearEarth⚡#detection⚡#nasa⚡#galaxy⚡#stars⚡#astronomy⚡#universe⚡#cosmos⚡#space 👉subscribe Universe Mysteries 👉more Channels ​

Universe Mysteries 🪐

@cosmomyst · Post #475 · 11/03/2025, 12:21 PM

🪐 Asteroid (2014) AA was discovered on January 1, 2014, just hours before it entered Earth's atmosphere near West Africa and burned up harmlessly. This rare event made 2014 AA only the second asteroid ever detected before impacting Earth, highlighting the importance of sky surveys to spot even small space rocks before they arrive. ✨ #asteroids⚡#impact⚡#detection⚡#nasa⚡#galaxy⚡#stars⚡#astronomy⚡#universe⚡#cosmos⚡#space 👉subscribe Universe Mysteries 👉more Channels ​

Machinelearning

@ai_machinelearning_big_data · Post #9834 · 04/08/2026, 03:04 PM

🌟WildDet3D: открытая модель монокулярной 3D-детекции по одному снимку. Институт Аллена представил модель WildDet3D, которая по одному изображению строит 3D-рамки объектов: оценивает их положение, размер и ориентацию в метрических координатах. Модель принимает сразу несколько типов промптов: текстовый запрос, клик по точке или готовый 2D-бокс от внешнего детектора. 🟡Архитектура состоит из 3 блоков 2D-детектор построен на SAM3 и обрабатывает все типы запросов. Геометрическая ветка использует энкодер DINOv2 с обучаемым декодером глубины, учитывающим геометрию обзора: направления лучей камеры зашиваются через сферические гармоники, что снимает необходимость в отдельной калибровке. Третий компонент, 3D-head, объединяет через кросс-внимание 2D-детекции с признаками глубины и поднимает их в полноценные 3D-боксы. Если на инференсе доступны данные с LiDAR, ToF или стереокамеры, они подмешиваются в ту же геометрическую ветку без переобучения. 🟡Тесты На бенчмарке Omni3D модель показывает 34,2 AP с текстовыми промптами (это +5,8 пункта к прежнему лидеру 3D-MOOD). На zero-shot переносе на Argoverse 2 WildDet3D практически удваивает прежний результат: 40,3 ODS против 23,8. На редких категориях из собственного бенчмарка WildDet3D-Bench успехи, разумеется, еще лучше - 47,4 AP против 2,4 у 3D-MOOD. 🟡Вместе с моделью вышло демо-приложение для iOS. Оно использует видеопоток с камеры iPhone и данные LiDAR-сенсора, чтобы в реальном времени отрисовывать 3D-боксы поверх сцены как AR-оверлей. Это наглядная демонстрация того, как монокулярная модель усиливается, когда устройство умеет отдавать дополнительный сигнал глубины. 🟡Третья часть релиза - датасет WildDet3D-Data. Более 1 млн. изображений и 3,7 млн. верифицированных 3D-аннотаций, охватывающих свыше 13 тыс. категорий объектов. По сценам распределение получилось такое: 52% помещений, 32% городской среды и 15% природы. Он собран на основе 2D-наборов (COCO, LVIS, Objects365, V3Det): кандидаты в 3D-боксы генерировались 5 независимыми методами оценки геометрии, затем фильтровались, проверялись VLM и дополнительно отбирались людьми. 🟡Статья 🟡Модель 🟡Техотчет 🟡Demo 🖥GitHub @ai_machinelearning_big_data #AI#ML#CV#Detection#WildDet3D#Ai2

GitHub Trends

@githubtrending · Post #14697 · 05/11/2025, 12:00 PM

#go#attacks_prevention#detection#linux#protection#security CrowdSec is an open-source security solution that helps protect servers from malicious IP addresses. It uses a community-driven approach, where users share information about threats they've faced, creating a shared blocklist to prevent attacks. CrowdSec's Security Engine can detect bad behaviors by analyzing logs and HTTP requests, and it supports multiple platforms. This system is fast, easy to use, and designed for modern infrastructures, making it a powerful tool for securing your systems against various threats. By using CrowdSec, you benefit from collective protection and can focus on real security issues. https://github.com/crowdsecurity/crowdsec

Libreware

@libreware · Post #1512 · 09/28/2025, 11:58 AM

Chasing Your Tail (CYT) https://github.com/ArgeliusLabs/Chasing-Your-Tail-NG A comprehensive #WiFi probe request analyzer that monitors and tracks wireless devices by analyzing their probe requests. The system integrates with #Kismet for packet capture and WiGLE API for #SSID#geolocation analysis, featuring advanced #surveillance#detection capabilities. Features Real-time Wi-Fi monitoring with Kismet integration Advanced surveillance detection with persistence scoring Automatic GPS integration - extracts coordinates from Bluetooth GPS via Kismet GPS correlation and location clustering (100m threshold) Spectacular KML visualization for Google Earth with professional styling and interactive content Multi-format reporting - Markdown, HTML (with pandoc), and KML outputs Time-window tracking (5, 10, 15, 20 minute windows) WiGLE API integration for SSID geolocation Multi-location tracking algorithms for detecting following behavior Enhanced GUI interface with surveillance analysis button Organized file structure with dedicated output directories Comprehensive logging and analysis tools Requirements Python 3.6+ Kismet wireless packet capture Wi-Fi adapter supporting monitor mode Linux-based system WiGLE API key (optional)

Crypto M - Crypto News

@CryptoM · Post #65081 · 04/10/2026, 08:37 PM

🚀 AI TRENDS | Wall Street Banks Test Anthropic's Mythos Model for Vulnerability Detection Wall Street banks have begun internal testing of Anthropic's Mythos model, as reported by Bloomberg on X. The initiative comes amid encouragement from U.S. President Donald Trump's administration officials, who are advocating for its use in identifying potential vulnerabilities. The Mythos model, developed by Anthropic, is designed to enhance security measures within financial institutions by leveraging advanced AI capabilities. This move reflects a growing trend among major banks to integrate cutting-edge technology to bolster their defenses against emerging threats. #AI#trends#WallStreet#banks#Anthropic#Mythos#model#vulnerability#detection#security#financialinstitutions#AItechnology#emergingthreats

GitHub Trends

@githubtrending · Post #15601 · 04/05/2026, 11:30 AM

#yara#awesome_list#blueteam#blueteam_tools#cti#detection#detection_engineering#dfir#hacktools#incident_response#ioc#iocs#ir#ransomware#redteam#rmm#security#siem#soc#threat_hunting#threat_intelligence You can access comprehensive security detection lists and threat hunting resources that help identify malicious activity across your infrastructure. These curated collections include indicators like suspicious file hashes, domain names, IP addresses, and behavioral patterns organized by threat type—from ransomware and phishing to command-and-control servers and vulnerable drivers. By integrating these lists into your security tools like SIEM platforms and endpoint detection systems, you gain immediate visibility into known threats while learning detection methodologies through guides and YARA rules. This accelerates your ability to hunt for compromises, validate security controls, and stay current with emerging attack techniques without building detection logic from scratch. https://github.com/mthcht/awesome-lists