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Principal Software Engineer - DSP

We have an opportunity for a Sr. Principal Software Engineer within the Naval Radar Software Department in Tewksbury, Massachusetts. The Naval Radar Software Department mission is to provide world class Radar Software to be used in military systems deployed at sea and on land. Our software teams employ an Agile Scrum process to rapidly design, code, integrate and test capabilities on a continuous basis into a mature solution for our customers.

An Exact Quantized Decentralized Gradient Descent Algorithm

We consider the problem of decentralized consensus optimization, where the sum of n smooth and strongly convex functions are minimized over n distributed agents that form a connected network. In particular, we consider the case that the communicated local decision variables among nodes are quantized in order to alleviate the communication bottleneck in distributed optimization.

Audio Signal Processing Consultant needed for growing software company

I've recently inherited my father's audio software company, FxSound, and I'm looking to get a paid consultation on DSP and audio as it relates to our software. 

We lost our audio and DSP engineer when my father passed, and I want to bring on a DSP/audio engineer to ensure that we're moving our product in the right direction and bringing real value to our customers.

Occlusion-Aware Depth Map Coding Optimization Using Allowable Depth Map Distortions

In depth map coding, rate-distortion optimization for those pixels that will cause occlusion in view synthesis is a rather challenging task, since the synthesis distortion estimation is complicated by the warping competition and the occlusion order can be easily changed by the adopted optimization strategy. 

Visual Attention Prediction for Stereoscopic Video by Multi-Module Fully Convolutional Network

Visual attention is an important mechanism in the human visual system (HVS) and there have been numerous saliency detection algorithms designed for 2D images/video recently. However, the research for fixation detection of stereoscopic video is still limited and challenging due to the complicated depth and motion information. 

Self-Guiding Multimodal LSTM - When We Do Not Have a Perfect Training Dataset for Image Captioning

In this paper, a self-guiding multimodal LSTM (sgLSTM) image captioning model is proposed to handle an uncontrolled imbalanced real-world image-sentence dataset. We collect a FlickrNYC dataset from Flickr as our testbed with 306,165 images and the original text descriptions uploaded by the users are utilized as the ground truth for training.