The Freiburg Groceries Dataset
Philipp Jund, Nichola Abdo, Andreas Eitel, Wolfram Burgard

TL;DR
The Freiburg Groceries Dataset provides a diverse set of 5,000 images of grocery items in real-world settings, supporting machine learning and robotics research in object recognition within domestic environments.
Contribution
This paper introduces a new, diverse grocery dataset with real-world images, including various perspectives and clutter, and provides a baseline classification performance.
Findings
Achieved 78.9% accuracy with CaffeNet baseline
Dataset includes 25 classes with at least 97 images each
Images collected from real stores and apartments
Abstract
With the increasing performance of machine learning techniques in the last few years, the computer vision and robotics communities have created a large number of datasets for benchmarking object recognition tasks. These datasets cover a large spectrum of natural images and object categories, making them not only useful as a testbed for comparing machine learning approaches, but also a great resource for bootstrapping different domain-specific perception and robotic systems. One such domain is domestic environments, where an autonomous robot has to recognize a large variety of everyday objects such as groceries. This is a challenging task due to the large variety of objects and products, and where there is great need for real-world training data that goes beyond product images available online. In this paper, we address this issue and present a dataset consisting of 5,000 images covering…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Advanced Neural Network Applications · Visual Attention and Saliency Detection
