Authors

* External authors

Venue

Date

Share

DuET: Dual Incremental Object Detection via Exemplar-Free Task Arithmetic

Munish Monga

Vishal Chudasama

Pankaj Wasnik

Biplab Banerjee*

* External authors

ICCV-25

2025

Abstract

Real-world object detection systems, such as those in autonomous driving and surveillance, must continuously learn new object categories and simultaneously adapt to changing environmental conditions. Existing approaches, Class Incremental Object Detection (CIOD) and Domain Incremental Object Detection (DIOD)—only address one aspect of this challenge. CIOD struggles in unseen domains, while DIOD suffers from catastrophic forgetting when learning new classes, limiting their real-world applicability. To overcome these limitations, we introduce Dual Incremental Object Detection (DuIOD), a more practical setting that simultaneously handles class and domain shifts in an exemplar-free manner. We propose DuET, a Task Arithmetic-based model merging framework that enables stable incremental learning while mitigating sign conflicts through a novel Directional Consistency Loss. Unlike prior methods, DuET is detector-agnostic, allowing models like YOLO11 and RT-DETR to function as real-time incremental object detectors. To comprehensively evaluate both retention and adaptation, we introduce the Retention-Adaptability Index (RAI), which combines the Average Retention Index (Avg RI) for catastrophic forgetting and the Average Generalization Index for domain adaptability into a common ground. Extensive experiments on the Pascal Series and Diverse Weather Series demonstrate DuET’s effectiveness, achieving a +13.12% RAI improvement while preserving 89.3% Avg RI on the Pascal Series (4 tasks), as well as a +11.39% RAI improvement with 88.57% Avg RI on the Diverse Weather Series (3 tasks), outperforming existing methods.

Related Publications

Precise Event Spotting in Sports Videos: Solving Long-Range Dependency and Class Imbalance

CVPR, 2025
Sanchayan Santra, Vishal Chudasama, Pankaj Wasnik, Vineeth N Balasubramanian

Precise Event Spotting (PES) aims to identify events and their class from long, untrimmed videos, particularly in sports. The main objective of PES is to detect the event at the exact moment it occurs. Existing methods mainly rely on features from a large pre-trained network…

Faster Machine Translation Ensembling with Reinforcement Learning and Competitive Correction

NAACL, 2025
Kritarth Prasad, Mohammadi Zaki, Pratik Singh, Pankaj Wasnik

Ensembling neural machine translation (NMT) models to produce higher-quality translations than the $L$ individual models has been extensively studied. Recent methods typically employ a candidate selection block (CSB) and an encoder-decoder fusion block (FB), requiring infere…

Cross-Modal Fusion and Attention Mechanism for Weakly Supervised Video Anomaly Detection

CVPRW, 2025
Ayush Ghadiya, Purbayan Kar, Vishal Chudasama, Pankaj Wasnik

Recently, weakly supervised video anomaly detection (WS-VAD) has emerged as a contemporary research direction to identify anomaly events like violence and nudity in videos using only video-level labels. However, this task has substantial challenges, including addressing imba…

  • HOME
  • Publications
  • DuET: Dual Incremental Object Detection via Exemplar-Free Task Arithmetic

JOIN US

Shape the Future of AI with Sony AI

We want to hear from those of you who have a strong desire
to shape the future of AI.