Categories: FAANG

Semi-Supervised and Long-Tailed Object Detection with CascadeMatch

This paper focuses on long-tailed object detection in the semi-supervised learning setting, which poses realistic challenges, but has rarely been studied in the literature. We propose a novel pseudo-labeling-based detector called CascadeMatch. Our detector features a cascade network architecture, which has multi-stage detection heads with progressive confidence thresholds. To avoid manually tuning the thresholds, we design a new adaptive pseudo-label mining mechanism to automatically identify suitable values from data. To mitigate confirmation bias, where a model is negatively reinforced by…
AI Generated Robotic Content

Recent Posts

Pirate VFX Breakdown | Made almost exclusively with SDXL and Wan!

In the past weeks, I've been tweaking Wan to get really good at video inpainting.…

17 hours ago

Try Deep Think in the Gemini app

Deep Think utilizes extended, parallel thinking and novel reinforcement learning techniques for significantly improved problem-solving.

17 hours ago

Introducing Amazon Bedrock AgentCore Browser Tool

At AWS Summit New York City 2025, Amazon Web Services (AWS) announced the preview of…

17 hours ago

New vision model from Cohere runs on two GPUs, beats top-tier VLMs on visual tasks

Cohere's Command A Vision can read graphs and PDFs to make enterprise research richer and…

18 hours ago

Anthropic Revokes OpenAI’s Access to Claude

OpenAI lost access to the Claude API this week after Anthropic claimed the company was…

18 hours ago

New AI tool learns to read medical images with far less data

A new artificial intelligence (AI) tool could make it much easier—and cheaper—for doctors and researchers…

18 hours ago