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Cristian Sminchisescu

Researcher at Google

Publications -  189
Citations -  14699

Cristian Sminchisescu is an academic researcher from Google. The author has contributed to research in topics: Computer science & Image segmentation. The author has an hindex of 53, co-authored 173 publications receiving 12268 citations. Previous affiliations of Cristian Sminchisescu include University of Toronto & Romanian Academy.

Papers
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Journal ArticleDOI

Human3.6M: Large Scale Datasets and Predictive Methods for 3D Human Sensing in Natural Environments

TL;DR: A new dataset, Human3.6M, of 3.6 Million accurate 3D Human poses, acquired by recording the performance of 5 female and 6 male subjects, under 4 different viewpoints, is introduced for training realistic human sensing systems and for evaluating the next generation of human pose estimation models and algorithms.
Journal ArticleDOI

CPMC: Automatic Object Segmentation Using Constrained Parametric Min-Cuts

TL;DR: A novel framework to generate and rank plausible hypotheses for the spatial extent of objects in images using bottom-up computational processes and mid-level selection cues and it is shown that the algorithm can be used, successfully, in a segmentation-based visual object category recognition pipeline.
Book ChapterDOI

Semantic segmentation with second-order pooling

TL;DR: This paper introduces multiplicative second-order analogues of average and max-pooling that together with appropriate non-linearities lead to state-of-the-art performance on free-form region recognition, without any type of feature coding.
Proceedings ArticleDOI

Constrained parametric min-cuts for automatic object segmentation

TL;DR: It is shown that this algorithm significantly outperforms the state of the art for low-level segmentation in the VOC09 segmentation dataset and achieves the same average best segmentation covering as the best performing technique to date.
Proceedings ArticleDOI

The Moving Pose: An Efficient 3D Kinematics Descriptor for Low-Latency Action Recognition and Detection

TL;DR: A fast, simple, yet powerful non-parametric Moving Pose (MP) framework that enables low-latency recognition, one-shot learning, and action detection in difficult unsegmented sequences and is real-time, scalable, and outperforms more sophisticated approaches on challenging benchmarks.