Publications by Marcella Cornia

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Towards Video Captioning with Naming: a Novel Dataset and a Multi-Modal Approach

Authors: Pini, Stefano; Cornia, Marcella; Baraldi, Lorenzo; Cucchiara, Rita

Published in: LECTURE NOTES IN COMPUTER SCIENCE

Current approaches for movie description lack the ability to name characters with their proper names, and can only indicate people … (Read full abstract)

Current approaches for movie description lack the ability to name characters with their proper names, and can only indicate people with a generic "someone" tag. In this paper we present two contributions towards the development of video description architectures with naming capabilities: firstly, we collect and release an extension of the popular Montreal Video Annotation Dataset in which the visual appearance of each character is linked both through time and to textual mentions in captions. We annotate, in a semi-automatic manner, a total of 53k face tracks and 29k textual mentions on 92 movies. Moreover, to underline and quantify the challenges of the task of generating captions with names, we present different multi-modal approaches to solve the problem on already generated captions.

2017 Relazione in Atti di Convegno

Visual Saliency for Image Captioning in New Multimedia Services

Authors: Cornia, Marcella; Baraldi, Lorenzo; Serra, Giuseppe; Cucchiara, Rita

Image and video captioning are important tasks in visual data analytics, as they concern the capability of describing visual content … (Read full abstract)

Image and video captioning are important tasks in visual data analytics, as they concern the capability of describing visual content in natural language. They are the pillars of query answering systems, improve indexing and search and allow a natural form of human-machine interaction. Even though promising deep learning strategies are becoming popular, the heterogeneity of large image archives makes this task still far from being solved. In this paper we explore how visual saliency prediction can support image captioning. Recently, some forms of unsupervised machine attention mechanisms have been spreading, but the role of human attention prediction has never been examined extensively for captioning. We propose a machine attention model driven by saliency prediction to provide captions in images, which can be exploited for many services on cloud and on multimedia data. Experimental evaluations are conducted on the SALICON dataset, which provides groundtruths for both saliency and captioning, and on the large Microsoft COCO dataset, the most widely used for image captioning.

2017 Relazione in Atti di Convegno

A Deep Multi-Level Network for Saliency Prediction

Authors: Cornia, Marcella; Baraldi, Lorenzo; Serra, Giuseppe; Cucchiara, Rita

Published in: INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION

This paper presents a novel deep architecture for saliency prediction. Current state of the art models for saliency prediction employ … (Read full abstract)

This paper presents a novel deep architecture for saliency prediction. Current state of the art models for saliency prediction employ Fully Convolutional networks that perform a non-linear combination of features extracted from the last convolutional layer to predict saliency maps. We propose an architecture which, instead, combines features extracted at different levels of a Convolutional Neural Network (CNN). Our model is composed of three main blocks: a feature extraction CNN, a feature encoding network, that weights low and high level feature maps, and a prior learning network. We compare our solution with state of the art saliency models on two public benchmarks datasets. Results show that our model outperforms under all evaluation metrics on the SALICON dataset, which is currently the largest public dataset for saliency prediction, and achieves competitive results on the MIT300 benchmark.

2016 Relazione in Atti di Convegno

Multi-Level Net: a Visual Saliency Prediction Model

Authors: Cornia, Marcella; Baraldi, Lorenzo; Serra, Giuseppe; Cucchiara, Rita

Published in: LECTURE NOTES IN COMPUTER SCIENCE

State of the art approaches for saliency prediction are based on Full Convolutional Networks, in which saliency maps are built … (Read full abstract)

State of the art approaches for saliency prediction are based on Full Convolutional Networks, in which saliency maps are built using the last layer. In contrast, we here present a novel model that predicts saliency maps exploiting a non-linear combination of features coming from different layers of the network. We also present a new loss function to deal with the imbalance issue on saliency masks. Extensive results on three public datasets demonstrate the robustness of our solution. Our model outperforms the state of the art on SALICON, which is the largest and unconstrained dataset available, and obtains competitive results on MIT300 and CAT2000 benchmarks.

2016 Relazione in Atti di Convegno

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