DCU team at the NTCIR-15 Micro-activity Retrieval Task

TK Le, MD Nguyen, LD Tran, VT Ninh, C Gurrin… - 2020 - doras.dcu.ie
2020doras.dcu.ie
The growing attention to lifelogging research has led to the creation of many retrieval
systems, most of which employed event segmentation as core functionality. While previous
literature focused on splitting lifelog data into broad segments of daily living activities, less
attention was paid to micro-activities which last for short periods of time, yet carry valuable
information for building a high-precision retrieval engine. In this paper, we present our efforts
in addressing the NTCIR-15 MART challenge, in which the participants were asked to …
The growing attention to lifelogging research has led to the creation of many retrieval systems, most of which employed event segmentation as core functionality. While previous literature focused on splitting lifelog data into broad segments of daily living activities, less attention was paid to micro-activities which last for short periods of time, yet carry valuable information for building a high-precision retrieval engine. In this paper, we present our efforts in addressing the NTCIR-15 MART challenge, in which the participants were asked to retrieve micro-activities from a multi-modal dataset. We proposed five models which investigate imagery and sensory data, both jointly and separately using various Deep Learn- ing and Machine Learning techniques, and achieved a maximum mAP score of 0.901 using an Image Tabular Pair-wise Similarity model, and overall ranked second in the competition. Our model not only captures the information coming from the temporal visual data combined with sensor signal, but also works as a Siamese network to discriminate micro-activities.
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