TP-MVCC: Tri-plane Multi-view Fusion Model for Silkie Chicken Counting

Sirui Chen, Yuhong Feng, Yifeng Wang, Jianghai Liao, Qi Zhang

Published: 2025/9/29

Abstract

Accurate animal counting is essential for smart farming but remains difficult in crowded scenes due to occlusions and limited camera views. To address this, we propose a tri-plane-based multi-view chicken counting model (TP-MVCC), which leverages geometric projection and tri-plane fusion to integrate features from multiple cameras onto a unified ground plane. The framework extracts single-view features, aligns them via spatial transformation, and decodes a scene-level density map for precise chicken counting. In addition, we construct the first multi-view dataset of silkie chickens under real farming conditions. Experiments show that TP-MVCC significantly outperforms single-view and conventional fusion comparisons, achieving 95.1\% accuracy and strong robustness in dense, occluded scenarios, demonstrating its practical potential for intelligent agriculture.

TP-MVCC: Tri-plane Multi-view Fusion Model for Silkie Chicken Counting | SummarXiv | SummarXiv