tinyML Talks Morocco: Enabling Ultra-low Power Always-On Computer Vision at Qualcomm
tinyML: Enabling Ultra-low Power Always-On Computer Vision at Qualcomm
Ravishankar Sivalingam, Ph.D.
Sr. Staff Engineer/Manager
Qualcomm AI Research
Achieving always-on computer vision in a battery-constrained device for TinyML applications is a challenging feat. To meet the requirements of computer vision at 1mW, innovation and end-to-end optimization is necessary across the sensor, custom ASIC components, architecture, algorithm, software, and custom trainable models. Qualcomm Technologies developed an always-on computer vision module that comprises a low-power monochrome qVGA CMOS image sensor and an ultra-low power custom SoC with dedicated hardware for computer vision algorithms. By challenging long-held assumptions in traditional computer vision, we are enabling new applications in mobile phones, wearables, and IoT. We also introduce always-on computer vision system training tools, which facilitate rapid training, tuning, and deployment of custom object detection models. This talk pr
10 views
24
4
2 years ago 00:10:23 18
How TinyML Gives us Spider-Man Powers | Emelie Eldracher | TEDxMIT
2 years ago 00:51:33 2
#100 Embedded Machine Learning on Edge Devices(with Daniel Situnayake)
3 years ago 00:59:44 9
tinyML Talks: Advanced Anomaly Detection Made Easy
3 years ago 01:01:09 3
tinyML Talks: Energy-Efficiency and Security for TinyML and EdgeAI: A Cross-Layer Approach
3 years ago 01:04:11 4
tinyML Talks Pakistan: FFConv: An FPGA-based Accelerator for Fast Convolution Layers in...
3 years ago 00:53:51 2
tinyML Talks: Oculi is putting the human eye in A.I.
3 years ago 00:28:21 2
tinyML Asia 2021 Justin Kao: A lightweight face detection method working with Himax Ultra-Low...
3 years ago 00:23:01 1
tinyML Asia 2021 Haochen Xie: An approach to dynamically integrate heterogenous AI components...
3 years ago 00:29:39 1
tinyML Asia 2021 Joshua Chang: Sensor Fusion using Machine Learning: Smart Forehead Temperature...
3 years ago 01:01:24 1
tinyML Talks: The Multilingual Spoken Words Corpus, a Massive Keyword Spotting Dataset
3 years ago 00:34:03 9
tinyML Talks Toronto Part 1: Evolutionary Needs of TinyML
3 years ago 00:17:35 1
tinyML Talks Toronto Part 2: tinyMLedu: widening access to tinyML education and resources
3 years ago 00:27:20 54
tinyML Talks Toronto Part 3: tinyML4STEM: using tinyML for Neuroscience in K12
3 years ago 01:06:51 1
tinyML Talks India: Single Lead ECG Classification On Wearable and Implantable Devices
3 years ago 00:26:53 4
tinyML Asia 2021 Yihong Wu: Lightweight visual localization with deep learning
3 years ago 00:56:12 6
tinyML Talks: CFU Playground: Customize Your ML Processor for Your Specific TinyML Model
3 years ago 00:49:23 5
tinyML Asia 2021 Chanwoo Kim: A review of on-device fully neural end-to-end speech recognition...
3 years ago 01:10:29 3
tinyML Talks: The Value of Edge AI for Industrial Applications: onsemi and SensiML IIoT Solutions
3 years ago 00:53:29 1
Pete Warden — Practical Applications of TinyML
3 years ago 01:00:43 2
tinyML Talks: AutoML + TinyML with Edge Impulse’s EON Tuner
3 years ago 00:56:06 10
tinyML Talks Morocco: Enabling Ultra-low Power Always-On Computer Vision at Qualcomm
3 years ago 01:01:21 3
tinyML Talks: Verification of ML-based AI systems and its applicability in Edge ML
3 years ago 01:01:20 14
tinyML Talks: A Practical Guide to Neural Network Quantization
3 years ago 00:16:49 4
EMEA 2021 tiny Talks: Building Heterogeneous TinyML Pipelines