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3 months ago

On Generalizing Detection Models for Unconstrained Environments

Prajjwal Bhargava

On Generalizing Detection Models for Unconstrained Environments

Abstract

Object detection has seen tremendous progress in recent years. However, current algorithms don't generalize well when tested on diverse data distributions. We address the problem of incremental learning in object detection on the India Driving Dataset (IDD). Our approach involves using multiple domain-specific classifiers and effective transfer learning techniques focussed on avoiding catastrophic forgetting. We evaluate our approach on the IDD and BDD100K dataset. Results show the effectiveness of our domain adaptive approach in the case of domain shifts in environments.

Code Repositories

prajjwal1/autonomous-object-detection
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
object-detection-on-bdd100k-valhybrid incremental net
mAP@0.5: 45.7
object-detection-on-india-driving-datasethybrid incremental net
mAP@0.5: 31.57

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On Generalizing Detection Models for Unconstrained Environments | Papers | HyperAI