TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Polarity Loss for Zero-shot Object Detection

Polarity Loss for Zero-shot Object Detection

Shafin Rahman, Salman Khan, Nick Barnes

2018-11-22Metric LearningZero-Shot Object DetectionGeneralized Zero-Shot Object Detectionobject-detectionZero-Shot LearningObject Detection
PaperPDFCodeCodeCode

Abstract

Conventional object detection models require large amounts of training data. In comparison, humans can recognize previously unseen objects by merely knowing their semantic description. To mimic similar behaviour, zero-shot object detection aims to recognize and localize 'unseen' object instances by using only their semantic information. The model is first trained to learn the relationships between visual and semantic domains for seen objects, later transferring the acquired knowledge to totally unseen objects. This setting gives rise to the need for correct alignment between visual and semantic concepts, so that the unseen objects can be identified using only their semantic attributes. In this paper, we propose a novel loss function called 'Polarity loss', that promotes correct visual-semantic alignment for an improved zero-shot object detection. On one hand, it refines the noisy semantic embeddings via metric learning on a 'Semantic vocabulary' of related concepts to establish a better synergy between visual and semantic domains. On the other hand, it explicitly maximizes the gap between positive and negative predictions to achieve better discrimination between seen, unseen and background objects. Our approach is inspired by embodiment theories in cognitive science, that claim human semantic understanding to be grounded in past experiences (seen objects), related linguistic concepts (word vocabulary) and visual perception (seen/unseen object images). We conduct extensive evaluations on MS-COCO and Pascal VOC datasets, showing significant improvements over state of the art.

Results

TaskDatasetMetricValueModel
Object DetectionMS-COCORecall43.56ZSD-Polarity Loss
Object DetectionMS-COCOmAP12.62ZSD-Polarity Loss
Object DetectionPASCAL VOC'07mAP62.1PL
3DMS-COCORecall43.56ZSD-Polarity Loss
3DMS-COCOmAP12.62ZSD-Polarity Loss
3DPASCAL VOC'07mAP62.1PL
2D ClassificationMS-COCORecall43.56ZSD-Polarity Loss
2D ClassificationMS-COCOmAP12.62ZSD-Polarity Loss
2D ClassificationPASCAL VOC'07mAP62.1PL
2D Object DetectionMS-COCORecall43.56ZSD-Polarity Loss
2D Object DetectionMS-COCOmAP12.62ZSD-Polarity Loss
2D Object DetectionPASCAL VOC'07mAP62.1PL
16kMS-COCORecall43.56ZSD-Polarity Loss
16kMS-COCOmAP12.62ZSD-Polarity Loss
16kPASCAL VOC'07mAP62.1PL

Related Papers

Unsupervised Ground Metric Learning2025-07-17A Real-Time System for Egocentric Hand-Object Interaction Detection in Industrial Domains2025-07-17RS-TinyNet: Stage-wise Feature Fusion Network for Detecting Tiny Objects in Remote Sensing Images2025-07-17Decoupled PROB: Decoupled Query Initialization Tasks and Objectness-Class Learning for Open World Object Detection2025-07-17Dual LiDAR-Based Traffic Movement Count Estimation at a Signalized Intersection: Deployment, Data Collection, and Preliminary Analysis2025-07-17GLAD: Generalizable Tuning for Vision-Language Models2025-07-17Are encoders able to learn landmarkers for warm-starting of Hyperparameter Optimization?2025-07-16Vision-based Perception for Autonomous Vehicles in Obstacle Avoidance Scenarios2025-07-16