We present Minerva (‘Musical INstrumEnts Represented in the Visual Arts’): a novel benchmark data set in the field of object detection, focused on the detection of musical instruments in non-photorealistic image collections. This task can be situated in the field of music iconography, a discipline on the brink of musicology and art history, studying the object, themes, and subject matter relating to music as they are represented in the visual arts. Our benchmark experiments highlight the feasibility of the classification and detection tasks under scrutiny but also, and perhaps primarily, the significant challenges that state-of-the-art machine learning systems are still confronted with on this data
This paper discusses design and implementation of classifying system for recognition of musical inst...
International audienceAccurately detecting music symbols in images of historical, complex, dense orc...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
peer reviewedIn this paper, we present MINERVA, the first benchmark dataset for the detection of mus...
Deep learning is bringing breakthroughs to many computer vision subfields including Optical Music Re...
Musical documents may contain heterogeneous information such as music symbols, text, staff lines, or...
The paper is under consideration at Pattern Recognition LettersThe localization and classification o...
Comunicació presentada a la 13th Sound and Music Computing Conference, celebrada el 31 d'agost de 20...
Recent interest in the preservation of our heritage has brought about increased archival research, w...
This paper is brief research on how to identify the audio instruments using machine learning. Algori...
There have been several attempts to improve the retrieval of symbolic music information by Optical M...
In this research, we study how to classify of handwritten music symbols in early music manuscripts w...
International audienceOptical Music Recognition (OMR) is the challenge of understanding the content ...
The DeepScoresV2 Dataset for Music Object Detection contains digitally rendered images of written sh...
This paper discusses design and implementation of classifying system for recognition of musical inst...
International audienceAccurately detecting music symbols in images of historical, complex, dense orc...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
peer reviewedIn this paper, we present MINERVA, the first benchmark dataset for the detection of mus...
Deep learning is bringing breakthroughs to many computer vision subfields including Optical Music Re...
Musical documents may contain heterogeneous information such as music symbols, text, staff lines, or...
The paper is under consideration at Pattern Recognition LettersThe localization and classification o...
Comunicació presentada a la 13th Sound and Music Computing Conference, celebrada el 31 d'agost de 20...
Recent interest in the preservation of our heritage has brought about increased archival research, w...
This paper is brief research on how to identify the audio instruments using machine learning. Algori...
There have been several attempts to improve the retrieval of symbolic music information by Optical M...
In this research, we study how to classify of handwritten music symbols in early music manuscripts w...
International audienceOptical Music Recognition (OMR) is the challenge of understanding the content ...
The DeepScoresV2 Dataset for Music Object Detection contains digitally rendered images of written sh...
This paper discusses design and implementation of classifying system for recognition of musical inst...
International audienceAccurately detecting music symbols in images of historical, complex, dense orc...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...