An Improved Labelling for the INRIA Person Data Set for Pedestrian Detection
نویسندگان
چکیده
Data sets are a fundamental tool for comparing detection algorithms, fostering advances in the state of the art. The INRIA person data set is very popular in the Pedestrian Detection community, both for training detectors and reporting results. Yet, the labelling of its test set has some limitations: some of the pedestrians are not labelled, there is no specific label for the ambiguous cases and the information on the visibility ratio of each person is missing. We present a new labelling that overcomes such limitations and show that it can be used to evaluate the performance of detection algorithms in a more truthful way.
منابع مشابه
On the purity of training and testing data for learning: The case of pedestrian detection
The training and the evaluation of learning algorithms depend critically on the quality of data samples. We denote as pure the samples that identify clearly and without any ambiguity the class of objects of interest. For instance, in pedestrian detection algorithms, we consider as pure samples the ones containing persons who are fully visible and are imaged at a good resolution (larger than the...
متن کاملMultiple Instance Boost Using Graph Embedding Based Decision Stump for Pedestrian Detection
Pedestrian detection in still image should handle the large appearance and stance variations arising from the articulated structure, various clothing of human as well as viewpoints. In this paper, we address this problem from a view which utilizes multiple instances to represent the variations in multiple instance learning (MIL) framework. Specifically, logistic multiple instance boost (LMIBoos...
متن کاملA Heuristic Deformable Pedestrian Detection Method
Pedestrian detection is an important application in computer vision. Currently, most pedestrian detection methods focus on learning one or multiple fixed models. These algorithms rely heavily on training data and do not perform well in handling various pedestrian deformations. To address this problem, we analyze the cause of pedestrian deformation and propose a method to adaptively describe the...
متن کاملConfiguration Estimates Improve Pedestrian Finding
Fair discriminative pedestrian finders are now available. In fact, these pedestrian finders make most errors on pedestrians in configurations that are uncommon in the training data, for example, mounting a bicycle. This is undesirable. However, the human configuration can itself be estimated discriminatively using structure learning. We demonstrate a pedestrian finder which first finds the most...
متن کاملSPID: Surveillance Pedestrian Image Dataset and Performance Evaluation for Pedestrian Detection
Pedestrian detection is highly valued in intelligent surveillance systems. Most existing pedestrian datasets are autonomously collected from non-surveillance videos, which result in significant data differences between the self-collected data and practical surveillance data. The data differences include: resolution, illumination, view point, and occlusion. Due to the data differences, most exis...
متن کامل