Towards Ancient Plant Seed Classification: A Benchmark Dataset and Baseline Model
Rui Xing, Runmin Cong, Yingying Wu, Can Wang, Zhongming Tang, Fen Wang, Hao Wu, Sam Kwong

TL;DR
This paper introduces the first dataset and a specialized deep learning framework for classifying ancient plant seed images, significantly advancing archaeobotanical research capabilities.
Contribution
It presents a new dataset of 8,340 ancient seed images and a novel model, APSNet, incorporating size perception and decoupled decoding for improved classification accuracy.
Findings
Achieved 90.5% classification accuracy.
Outperformed existing image classification methods.
Provided a practical tool for archaeobotanical research.
Abstract
Understanding the dietary preferences of ancient societies and their evolution across periods and regions is crucial for revealing human-environment interactions. Seeds, as important archaeological artifacts, represent a fundamental subject of archaeobotanical research. However, traditional studies rely heavily on expert knowledge, which is often time-consuming and inefficient. Intelligent analysis methods have made progress in various fields of archaeology, but there remains a research gap in data and methods in archaeobotany, especially in the classification task of ancient plant seeds. To address this, we construct the first Ancient Plant Seed Image Classification (APS) dataset. It contains 8,340 images from 17 genus- or species-level seed categories excavated from 18 archaeological sites across China. In addition, we design a framework specifically for the ancient plant seed…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Archaeology and ancient environmental studies · Cultural Heritage Materials Analysis
